• <tr id="yyy80"></tr>
  • <sup id="yyy80"></sup>
  • <tfoot id="yyy80"><noscript id="yyy80"></noscript></tfoot>
  • 99热精品在线国产_美女午夜性视频免费_国产精品国产高清国产av_av欧美777_自拍偷自拍亚洲精品老妇_亚洲熟女精品中文字幕_www日本黄色视频网_国产精品野战在线观看 ?

    Predicting the output error of the suboptimal state estimator to improve the performance of the MPC-based artificial pancreas

    2023-12-01 09:51:34MartinDodekEvaMiklovicov
    Control Theory and Technology 2023年4期

    Martin Dodek·Eva Mikloviˇcová

    Abstract The error of single step-ahead output prediction is the information traditionally used to correct the state estimate while exploiting the new measurement of the system output.However,its dynamics and statistical properties can be further studied and exploited in other ways.It is known that in the case of suboptimal state estimation,this output prediction error forms a correlated sequence,hence it can be effectively predicted in real time.Such a suboptimal scenario is typical in applications where the process noise model is not known or it is uncertain.Therefore, the paper deals with the problems of analytical and empirical modeling, identification, and prediction of the output error of the suboptimal state estimator for the sake of improving the output prediction accuracy and ultimately the performance of the model predictive control.The improvements are validated on an empirical model of type 1 diabetes within an in-silico experiment focused on glycemia prediction and implementation of the MPC-based artificial pancreas.

    Keywords Suboptimal state estimation · Prediction · Autoregressive model · Moving average model · Model predictive control·Diabetes mellitus·Artificial pancreas

    1 Introduction

    In many applications and problems, like the model predictive control of glycemia in diabetic subjects,there is a need to estimate the system state based solely on noisy measurements of the system output.Traditional recursive state estimators/observers,such as the Kalman filter[1],are algorithms based on the prediction and correction of the state estimate by the new output measurement.It means that the state estimate is corrected(innovated)according to the single step-ahead output prediction error produced by the system model.

    It is known from the theory of Kalman filtering,that for an optimal state estimator,the sequence of the output error of the state observer(OESO),which is also called the innovation sequence,has the properties of Gaussian white noise.However,inthecaseofsuboptimalstateestimation,thisinnovation sequence is correlated[2,3]and thus can be effectively predicted in real time.

    However,why should one even consider using the suboptimal state estimation instead of the optimal one?To answer this question,the suboptimal state estimation is basically not an option of choice,but rather an inevitable consequence that arises from the unknown or poorly estimated parameters of the process noise model.The assumption of suboptimality is because the design of Kalman filter and its optimality relies on the exact knowledge of the process noise model,parameters of which are highly uncertain in many applications,or even the entries of the process noise covariance matrix are often used simply as the tuning parameters.It can be claimed that if there is a mismatch between the noise model and the actual statistical properties of the system,the OESO forms a correlated sequence.

    The main practical motivation for studying the dynamics of the OESO is to try to predict it in real time and then correct the predictions of the output variable accordingly,yet the ultimate aim is to involve this prediction in the model predictive control.Therefore,the outlined strategy can be seen as a relatively feasible and cheap way to improve prediction and control performance by effectively compensating for the effect of suboptimal state estimation.

    Concerning the target application domain outlined in the title, performing highly accurate predictions yields better forecasting of severe hyper- and hypo-glycemia states, as these are the major risks linked to diabetes and its treatment [4, 5].Another application of the proposed strategy is possible within an implementation of the model predictive control-based artificial pancreas [6, 7] to control glycemia in subjects with type 1 diabetes by automating the insulin dosing.

    The rationale for choosing this application domain to demonstrate the effectiveness of the proposed strategy is supported by the fact that in most available studies,e.g.in[8–17],the crucial entries of the covariance matrix of the process noise are considered tuning parameters in the Kalman filter design.Therefore,it can be concluded that the state estimator works suboptimally in such scenario.

    It should be mentioned for completeness, that there also exist sophisticated and dedicated methods[18–22]for estimating the noise models, which can potentially eliminate the problem of suboptimality of the state estimation.Unfortunately, these covariance matrix estimation methods have limited practical applicability, as they often provide biased estimates and typically require very large datasets to be supplied,what can be infeasible in many applications.

    In this paper, we provide important insights into the dynamics of the OESO from the analytical point of view,but alsofromthepracticaldata-drivenperspectivewherereduced models are considered.The primary motivation for using the reduced structures,such as the autoregressive and the moving average model, rather than the full analytical model, is their feasible prediction and identifiability from the experimentally obtained OESO sequence.

    The paper has been divided into the following sections:Sect.2 introduces the basic preliminaries,formulation of the stochastic state-space model, and equations describing the conventional state observer.In Sect.3, the full analytical model of the OESO is derived to provide some theoretical background.Section4 considers the reduced autoregressive model and comprises the formulation of the corresponding identification problem and the predictive equation.In Sect.5, the moving average model is studied in a similar way.Section6 covers the idea of using the identified models to enhance the output prediction accuracy and their inclusion in the model predictive control.The setup of the experiment aimed at prediction and model predictive control of glycemia in subjects with type 1 diabetes is outlined in Sect.7,while its results are discussed in Sect.8.

    It should be marginally mentioned that the stochastic nature of glycemia dynamics does not necessarily have to be modeled in the state space by the process noise and the measurement noise, since basic input–output transfer function models like the autoregressive-exogenous, autoregressive moving average with exogenous inputs, and Box–Jenkins model can also be used as reported in[23–26].The stochastic part of these input–output models is usually estimated in one step together with the deterministic submodels as a result of the system identification procedure from the experimental data,so there is no need to worry about the optimality of the state estimation.

    An application of the unconstrained model predictive control with the state-space model along with the state estimation basedontheKalmanfilterwaspresentedinstudy[27].Asimilar control strategy was reported in[28,29],but due to the input–output problem formulation the state estimator was not required.As another example of similar artificial pancreas scheme, in [30] the Kalman filter was used to estimate the state for the linear model predictive control with disturbance rejection.

    In our recent work [31], a novel optimal state estimator was proposed as an alternative to the Kalman filter.However,this algorithm was not based on the traditional recursive correction of the state estimate by the OESO, but it used the generalized least squares formulation of the problem.Also in this case,the optimality of the state estimate depended on the exact knowledge of the process noise model.

    From the perspective of unique contributions of this paper,it is important to remark that in any of the above referenced studies or in the latest comprehensive survey papers[32–34],the strategy of predicting the OESO and compensating for the suboptimality of the state estimation was not proposed or discussed.It can also be concluded that most authors relied on suboptimal state estimation with ad hoc tuning of the process noise model,hence leaving a significant headroom for improving the control performance by targeting this problem.

    Unlike the conventional MPC-based artificial pancreas that typically uses the suboptimal state estimator,which normally results in a correlated OESO sequence,we propose a new strategy to effectively compensate for this effect.The proposed modification involves the prediction of the OESO to directly correct the prediction of the system free response.It is worth noting that this modification is easy to embed in already existing MPC schemes [32–34] while inducing little more computational cost yet requiring no additional hardware modifications.In other words,the proposed OESO models and the prediction/correction strategy can eventually be retrofitted to any advanced MPC-based artificial pancreas design that utilizes the state estimator at the expense of relatively straightforward structural modification.Note that the other features of the artificial pancreas, such as the safety algorithms and constraints,do not directly interact with the proposed modification.

    2 Model structure and preliminaries

    The general discrete-time stochastic state-space empirical model of glycemia dynamics in subjects with type 1 diabetes is postulated as[31]

    wherek∈N is the current sample, the outputy[mmol/l]stands for the deviation of glycemia from its steady-state value,the inputu[U/min]denotes the deviation of the insulin administration rate from the basal rate,andd[g/min]represents the carbohydrate intake rate input.The state vector of thisnth order model is denotedx[n×1],w[n×1] is the process noise vector and the zero-mean uncorrelated random processv~N(0,R)represents the measurement noise of the glucose monitoring device[35].

    The parameters of model (1) include the state-transition matrixA[n×n],the input matrixB[n×2],and the output vectorC[1×n].The state-transition matrixAconsists of the submatricesAu,Adandthezeromatrices0 oftheconforming dimensions as

    where matricesAu[nu×nu] andAd[nd×nd] are in the canonical form and comprise the model coefficientssuch that

    The input matrixBis simply

    where 0 are the zero vectors of conforming dimensions andBu[nu×1],Bd[nd×1]are equal to

    The output vectorCgets

    whereCu[1×nu]andCd[1×nd]will comprise the model coefficients as

    The state vectorxalso holds the canonical form

    wherenuandndare the orders of the corresponding submodels,so the overall model order isn=nu+nd.The state variablesxu,xdrepresent the partial effects of insulin administration and carbohydrate intake,respectively.

    Consider that the process noisewin model(1)represents the effect of input uncertainties,so one can write

    Since all stochastic terms in(1)were defined as zero-mean uncorrelated stationary random processes, the covariance matrixQ[n×n]of the process noise(9)and the varianceRof the measurement noise are equal to

    2.1 State observer

    The state vectorxof model(1)is usually estimated using the recursive state observer

    where ?x[n×1] is the estimated state andK[n×1] is the gain vector,which is the subject of the observer design.The design is usually based on the optimal Kalman approach[1,36]in the case of stochastic system assumption,or using the pole-placement method if the system is deterministic.

    The state estimate residuale[n×1]will be defined as

    Finally,the single step-ahead model output prediction error?,i.e.the OESO,gets

    3 Dynamics of the state observer output error

    The model of the state estimate residualecan be derived by substituting ?x(k+1)from (12) andx(k+1)according to (1a)into(13)while substituting the outputy(k+1)in the terms of 1b as

    Eq.(15) can be transformed by applying the forward timeshift operatorzase(k+1)=ze(k)obtaining

    The above equation can be reshaped to separate vectore(k)as

    whereIis the unit matrix of the conforming dimensions.

    According to(14)and(17),?(k)holds

    Eq.(18) implies that the dynamics of the OESO is represented by a stochastic system with multiple independent noise inputs.One may realize that termC(zI-A+KC)-1results in a row vector of rational functionswith the common denominators(z)as the characteristic polynomial of this system.This consideration yields the transfer function model

    where

    IfQis the covariance matrix of the process noise according to(10),thenw(k)can be written as

    where 0 [n×1]is the zero vector,η[n+1×1]is the vector of uncorrelated noise inputs with the unit variance, i.e.,cov(η,η)=I,

    whereRis the variance of the measurement noise according to(11).

    Finally,model(19)can be generalized as the sum ofn+1 autoregressive-moving-average (ARMA)models by substitutingw(k)in the terms of(21)andv(k)from(23)as

    Since the process noise(9)has only two nonzero components and diagonal covariance matrix(10),general model(24)can be reduced to

    However, model (24) or (25) cannot be used to predict the OESO,since the random input vectorηas well as the partial outputsare unmeasurable in practice.

    Another important paradox concerning this analytical model is that since the covariance matrix of the process noise is considered unknown in the case of suboptimal state estimation,analytical model(24)simply cannot be determined.On the contrary,if the covariance matrix of the process noise is known,what implies that the state estimator works optimally,then model (24) will be known, but it will be unnecessary since the OESO is uncorrelated and hence it cannot be predicted.

    Concerning the identification of full model (24) directly from experimental data, i.e.based on the OESO sequence,this would be hardly possible primarily due to its structure and the large number of parameters to be estimated.

    The aforementioned issues with predictability and identifiability are the main motivation for further considering two reduced model structures,particularly the autoregressive and the moving average model.

    3.1 Optimality test

    To test whether the state estimator works optimally or not,the sample autocorrelation function of the OESO sequence has to be analyzed.In the case of optimal state estimation,this autocorrelation function should show a character similar to that of Dirac delta function.

    Supposing a finite-length experiment withNsamples,the autocorrelation functionR??(nTs)is estimated as[38,39]

    wheren∈Z satisfiesn

    4 Autoregressive model

    In this section,the dynamics of the OESO will be approximated by the single-input single-output autoregressive model defined as

    The polynomialq(z)of thisnqth order model gets

    The equivalent difference equation of model(27)holds

    The parameter vectorqgets

    4.1 Identification strategy

    According to difference equation(29),the corresponding linear regression system consideringNavailable samples takes

    or using the shorthand notation

    whereqis the parameter vector (30),is the regression matrix and?[N×1],η[N×1]are vectors.

    The parameter vectorqcan be estimated as ?qin a straightforward way using the least squares method with the optimal parameter estimate determined analytically as[40]

    4.2 Predictive form

    For model(27),the explicit prediction formula can be derived based on difference equation (29).The future values of the whitenoiseinputareobviouslyunknown,soassumingthatits statistically unbiased prediction is zero,i.e.E■η(k+i)■=0,thepredictiveformconsideringthepredictionhorizonnpgets

    Sincethenoiseinput in(27)is unmeasurable,byreshaping equation(29),η(k)can be estimated as

    5 Moving average model

    In this section,the dynamics of the OESO will be approximated by the moving average model

    The polynomialg(z)in thength order model(40)gets

    The difference equation for model(40)can be written as

    5.1 Identification strategy

    It is well known that estimating the moving average processes is more difficult than estimating the autoregressive processes[41].Since the input noiseηis unmeasurable in practice,the straightforward approach based on the least squares minimization of the model single step-ahead prediction error cannot be directly applied in this case.

    Therefore, to estimate the coefficient vector (43) using the available OESO sequence,the two-step method of Durbin[41,42]will be adopted.The first step of this method consists of fitting an autoregressive model to the OESO sequence via the ordinary least squares method in the terms of Sect.4.In the second step,the identified autoregressive model is used to estimate the input noiseηby filtering the OESO sequence by the inverse of the estimated autoregressive model according to(39).

    The second step uses this estimated input noise sequence ?ηto create the regression system and to estimate the parameters of the moving average process in the least squares sense.

    The corresponding regression system then gets

    or using the shorthand notation,

    wheregis the parameter vector(43),is the regression matrix and?[N×1],η[N×1]are vectors.The optimal parameter vectorgcan be estimated as

    5.2 Predictive form

    Having the model parameters estimated, the OESO (36)can be predicted.Assuming that the statistically unbiased prediction of the input zero-mean white noise is zero, the predictive form of the moving average model (40) can be derived according to the difference equation(42)as

    In practice,the input noiseηcannot be measured,so it has to be estimated based on the inverse filtering of?according to the difference equation(42)as

    6 Prediction and model predictive control with the OESO compensation

    In this section,the algorithm of model predictive control will be adopted from[31],while an important modification that concerns the prediction of the OESO will be proposed.

    Prediction of the state vectorxand the outputycan be expressed considering(1)as

    wherek∈N is the current sample andi∈N getsi=1···np,while assumingnp∈N is the prediction horizon.

    Notice that in(52),the OESO ??,which was predicted by the identified autoregressive or the moving average model,was taken into account by correcting the output prediction ?y.This is the most important modification of the traditional prediction and predictive control algorithms as it allows us to effectively compensate for the suboptimality of the state estimation.

    The predictive control minimizes the quadratic cost function of the model-based predictions of chosen system variables over the prediction horizonnp.The corresponding quadratic form gets[43,44]

    whereΔu f[nc×1] is the vector of future changes of the manipulated variable,while assumingncis the control horizon.MatrixA[nc×nc], vectorb[nc×1] and scalarcare defined as

    The optimization problem(53)can be solved by quadratic programming if linear inequalities constraints are considered.For the sake of simplicity,the elements of the reference vectoryrare equal to an appropriately chosen constantGtrepresenting the target glycemia.Pursuing the receding horizon strategy, only the first element of the optimal solution

    Δu fis actually applied,so one can write

    Note that the manipulated variable has to be constrained,so the minimal insulin infusion rateumin=0 U/min, whileumaxwill be adopted from [27].The corresponding linear inequalities system with respect to the decision vectorΔu fcan be formed by involving matrixΨ(57)as in[45]

    Compared to[31],the crucial modification of the control algorithm is made here by adding the prediction of the OESO ??(k+i)to equation(52).

    Concerning the safety features of automated insulin therapy, various additional strategies could be considered to enhance the current configuration.To avoid the adverse and dangerous insulin stacking phenomenon,the insulin on board[46–48]representing the amount of insulin still active from the previously administered doses can be involved.The dynamics of insulin on board can be represented by simple linear models like in[49],[50]or[51],while this signal can be used to form a special quadratic penalty that is added to the cost function(53)of the MPC.Alternatively,hard constraints for the insulin on board signal can also be assumed by extending the linear inequalities system(59)of the quadratic program accordingly.Another type of safety feature is to hard constrain the controlled variable by modifying the inequalities system (59) to prevent the risk of hypoglycemia and hyperglycemia as proposed in [26].As this strategy can potentially induce control infeasibility, soft formulation of the controlled variable constraints should be preferred, as proposed in[52,53].However,further details are beyond the scope of this paper.For information on safety features,see,e.g.[46,48,54].Also note that these safety features do not directly interact with the proposed strategy of predicting the output error of the suboptimal state estimator, which is the main contribution of the paper.

    7 Experimental setup

    To validate the proposed strategy and assess its practical effectiveness in application to the problem of prediction and predictive control of glycemia in subjects with type 1 diabetes, a simulation-based experiment was designed and evaluated.

    The glycemia response for this experiment was obtained by in-silico approach, simulating the complex physiologybased nonlinear model that was described in[55,56]and the references therein.The basal state of this model was determined with respect to the basal glycemiaGb=6 mmol/l and the corresponding basal insulin administration ratevb=0.01 U/min.

    The orders of empirical model (1) were chosen asnu=nd=4,implying the overall ordern=8.Note that the theory related to estimation of the model parametersin(3)andin(7),is not within the scope of this paper,so we suppose that model(1)was identified with parameters(60).However,for more details on this topic, we refer an interested reader to our recent works[25,57].

    Thepredictionhorizonandthecontrolhorizonwereassumed asnp=15,nc=10, while the sample time was chosen asTs=10 min.

    The variance of the measurement noise 11 and the variances of the process noise 10 were empirically adjusted as

    Note that since the variances of the process noise were just empirically tuned to obtain acceptable performance of the Kalman filter while the actual values cannot be determined because they are not based on any particular physiological mechanisms or characteristics of a diabetic subject,the state estimator will perform only suboptimally in this case, and hence the OESO sequence will be correlated.

    The observer gain vectorKwas calculated according to the Kalman filter design[1,36]while considering the model parameters(60)and the noise model parameters(61)as

    Concerning the initial tuning of the proposed empirical models of the OESO,the order of autoregressive model(27)was set asnq= 4, whereas the order of moving average model(40)was chosen asng=12.

    Fig.1 Evolution of the OESO ?(k) acquired during the experiment

    The experiments were designed to mimic the insulin treatment of a subject with type 1 diabetes during the two-day period.The first investigated problem concerns the prediction of glycemia during standard insulin bolus therapy that wascarriedoutaccordingtotheboluscalculatorrule(see[58]and the references therein).The second deals with automated insulin dosing managed by the model predictive control algorithm of the artificial pancreas.Both algorithms were modified in the terms of Sect.6.

    8 Discussion

    In this section,the results of the outlined simulation experiment will be comprehensively analyzed and discussed.

    The sequence of the OESO obtained in the terms of equation(14)during regular insulin treatment while simultaneously performing the state estimation according to(12)by considering the observer gain (62) is plotted in Fig.1.This figure suggests that although the state estimate asymptotically converges to the actual state,the character of the OESO sequence is far from ideal uncorrelated noise.

    To prove this, the autocorrelation function ?R??of the OESO was estimated according to (26) by processing the sequence from Fig.1 and is plotted in Fig.2.Analyzing this autocorrelation function, one can conclude that the OESO sequence is correlated,what confirms that the state estimator works suboptimally due to the empirically adjusted variances of the process noise(61).

    Performing the estimation of both reduced models of the OESO by pursuing the strategies presented in Sections 4 and 5,the following coefficients were estimated.

    Parameter vectorqof the autoregressive model(27):

    Parameter vectorgof the moving average model(40):

    Fig.2 Estimated autocorrelation function ?R??(nTs) of the OESO sequence from Fig.1

    Fig.3 Estimate of the autocorrelation function ?R?η ?η(nTs) of the estimated noise input for the autoregressive model

    To validate the models by filtering the correlated OESO sequence?by the inverse of each of the identified empirical models, i.e.byq(z) and, respectively, the input noise sequence was estimated according to (39) for the autoregressive model and according to (50) for the moving average model.The autocorrelation functions ?R?η?η(nTs) of these sequences for both model structures are depicted in Figs.3 and 4, which show their Dirac delta function-like nature,proving the estimated models valid.

    Now follows the prediction of the OESO using the predictive form(34)of the autoregressive model and the predictive form (47) of the moving average model respectively.Relatively accurate predictions for randomly chosen starting points can be observed in Fig.5.Both model structures showed almost identical performances and could predict the future evolution of the correlated OESO with a satisfying accuracy considering the highly stochastic nature of this signal.

    Fig.4 Estimate of the autocorrelation function ?R?η ?η(nTs) of the estimated noise input for the moving average model

    Fig.5 Prediction of the OESO using the both autoregressive model)and the moving average model

    The next comparison concerns the practical impact of correcting the glycemia prediction by predicted OESO as the original contribution of the paper.In Fig.6,one can see the uncorrected prediction of glycemia(?G)as the conventional strategy,as well as the predictions that involved the corrections by OESO predicted using the autoregressive(?GAR)and the moving average(?GMA)model.By a basic visual assessment, one can observe an improvement of the prediction accuracy, while the improvements concerned primarily the peaks of the response.Keep in mind that such differences between the uncorrected and the corrected prediction can be critical in situations such as decision making with regard to the application of insulin therapy.

    In addition to the graphical assessment,the prediction performance will be quantified by the quadratic metric

    which will provide a better assessment of the prediction performance.

    The last part of the experiment is focused on the model predictive control of glycemia in the context of the artificial pancreas implementation,where a positive effect of the proposed predictors on control performance is anticipated.To demonstrate this,Fig.7 shows the closed loop glycemia response,where involving the predictions of the OESO visibly improved the control performance in terms of tighter control with respect to the reference value, and reduced maximal and minimal observed glycemia,what is especially significant to reduce the risk of hyperglycemia and hypoglycemia.It can be concluded that both predictors performed almost identically, but way better than in the original case without compensating for the OESO.

    Fig.6 Prediction of glycemia without the OESO compensation G(t)compared to using the autoregressive model GAR(t) and the moving average model GMA(t)

    Fig.7 Predictive control of glycemia without the OESO compensation G(t)compared to using the autoregressive model GAR(t)and the moving average model GMA(t)

    Keep in mind that since typical values of the OESO are relatively low compared to the magnitude of the controlled variable(see Fig.1),the proposed strategy can naturally yield a limited effect.It can also be claimed that the strength of the desired effect is directly related to the performance level of the state observer and thus to the degree of mismatch between the process noise model and the actual statistical properties of the system.Therefore,for systems with an empirically tuned covariance matrix of the process noise,the strategy proposed in this paper is highly recommended.

    The control performance will be quantified by the maximalGmaxand the minimalGminobserved glycemia,and by the quadratic metric

    Table 1 Comparison of the prediction and control performance metrics

    Table 2 Comparison of the prediction and control performance metrics for the autoregressive model

    Table 3 Comparison of the prediction and control performance metrics for the moving average model

    whereGtis the target glycemia.

    The summary of prediction and control performance metrics obtained during the experiment is documented in Table 1,which also confirm the observations from Figs.6 and 7.

    Toinvestigatetheeffectofthechoiceofthetunableparameters of the OESO models, particularly the order of the autoregressive model (27)nqand the order of the moving average model (40)ngon the resulting performance of the proposed strategy, the experimentation was repeated under various configurations, yielding the results summarized in Tables 2 and 3.

    It can be concluded that the moving average model of the OESO performs slightly better in both prediction and predictive control than the autoregressive model,while the choice of the corresponding model ordersnq,ngalso affected the overall performance,yet not consistently for all the metrics considered.However, all studied models performed better than the original uncompensated configuration.

    9 Conclusions

    This study stressed that the OESO sequence in the case of suboptimal state estimation is correlated, while it can be effectively predicted by the autoregressive or the moving average models.These two reduced models could provide good predictability and identifiability from the experimental data.The predicted OESO was then involved to correct the output variable prediction and hence ultimately improve the performance of the model predictive control.It can be concluded that the presented strategy allowed to effectively compensate for the suboptimality of the state estimation caused by the inaccuracy of the process noise model in a relatively inexpensive and feasible way.

    We also obtained theoretical results demonstrating that the actual dynamics of the OESO is analytically described as the sum of ARMA processes,while this full structure was approximated by the autoregressive and the moving average models in practice.

    A promising application of our results would be possible within an implementation of the artificial pancreas in subjects with type 1 diabetes,where maximizing the performance of the model predictive control is of highest priority.The presented simulation-based experiment demonstrated that the dynamics of the OESO can be effectively predicted by both proposed reduced models,while there were documented positive effects on the accuracy of the glycemia prediction and on the performance of the predictive control.Keep in mind that although qualitative improvements do not appear to be significant at first sight,any feasible improvement matters a lot when managing glycemia and can have significant longterm consequences for patient health.

    Compared with the conservative structure of the MPCbased artificial pancreas[6,32–34]that utilizes the Kalman filter state estimation with typically empirically tuned covariance matrix of the process noise,which normally results in its suboptimal performance,the strategy proposed in this paper additionally involves an easily identifiable prediction model of the OESO to effectively compensate for the adverse effect of suboptimality of the state estimation by correcting the system free response prediction.Moreover, this structural modification is not computationally demanding and it can be easily embedded to the existing modular MPC schemes[6, 32–34] without involving any hardware adjustments or directly interacting with other features of the artificial pancreas such as constraints.

    On the contrary, compared with the alternative solution based on methodological estimation of the covariance matrix of the process noise according to the methods presented in[18–22]to implicitly ensure the optimality of the state estimation,it can be claimed that these methods typically require very large experimental datasets(tens of thousands of samples)to provide reliable and unbiased estimates,whereas the statistical models of the OESO proposed in this paper can be identified from relatively limited experimental data(hundreds of samples).

    In a nutshell,the most significant contributions presented in this work include the derivation of the analytical stochastic ARMAmodeloftheOESOanditsapproximationswhichcan be used to improve the performance of the suboptimal state observer in applications when the process noise model is not exactly known or is uncertain.It can be concluded that the actual effect of the proposed strategy depends primarily on the degree of plant-model mismatch of the noise model.

    Funding Open access funding provided by The Ministry of Education,Science,Research and Sport of the Slovak Republic in cooperation with Centre for Scientific and Technical Information of the Slovak Republic Open access funding provided by The Ministry of Education,Science,Research and Sport of the Slovak Republic in cooperation with Centre for Scientific and Technical Information of the Slovak Republic.

    Declarations

    Conflict of interest The authors have no competing interests to declare that are relevant to the content of this article.

    Open Access This article is licensed under a Creative Commons Attribution 4.0 International License,which permits use,sharing,adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made.The images or other third party material in this article are included in the article’s Creative Commons licence,unless indicated otherwise in a credit line to the material.If material is not included in the article’s Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitteduse,youwillneedtoobtainpermissiondirectlyfromthecopyright holder.To view a copy of this licence, visit http://creativecomm ons.org/licenses/by/4.0/.

    精品不卡国产一区二区三区| 欧美区成人在线视频| 亚洲美女搞黄在线观看| 国产片特级美女逼逼视频| 成人性生交大片免费视频hd| 高清毛片免费观看视频网站| 国产视频首页在线观看| 亚洲国产欧洲综合997久久,| 91av网一区二区| 久久久午夜欧美精品| 国产免费一级a男人的天堂| 在线观看免费视频日本深夜| 一级黄色大片毛片| 欧美日韩一区二区视频在线观看视频在线 | 亚洲国产精品sss在线观看| 久久久久久久久中文| 久久久a久久爽久久v久久| 婷婷色av中文字幕| 色视频www国产| 欧美3d第一页| 欧美3d第一页| 99热这里只有精品一区| 亚洲成a人片在线一区二区| 国产69精品久久久久777片| 秋霞在线观看毛片| 毛片女人毛片| 在现免费观看毛片| 一本一本综合久久| 毛片女人毛片| 男人和女人高潮做爰伦理| 国产精品久久视频播放| 嫩草影院入口| 亚洲av免费高清在线观看| 日日干狠狠操夜夜爽| 深爱激情五月婷婷| 舔av片在线| 国产精品三级大全| 亚洲精品国产成人久久av| 国产国拍精品亚洲av在线观看| 亚洲自偷自拍三级| 欧美精品国产亚洲| 免费不卡的大黄色大毛片视频在线观看 | av在线天堂中文字幕| 久久久久久大精品| 久久精品综合一区二区三区| 嫩草影院精品99| 国产精品精品国产色婷婷| 中国国产av一级| 综合色丁香网| 综合色av麻豆| 爱豆传媒免费全集在线观看| 亚洲精品日韩av片在线观看| 亚洲欧美精品专区久久| 久久99精品国语久久久| 亚洲乱码一区二区免费版| 2021天堂中文幕一二区在线观| 精品一区二区三区人妻视频| 国产老妇女一区| 欧美高清成人免费视频www| 中文资源天堂在线| 亚洲欧美成人精品一区二区| 少妇的逼水好多| 麻豆成人av视频| 亚洲性久久影院| 国产午夜精品一二区理论片| 99精品在免费线老司机午夜| 尤物成人国产欧美一区二区三区| 国产一级毛片在线| 如何舔出高潮| 校园春色视频在线观看| 午夜福利成人在线免费观看| 成年免费大片在线观看| 久久久国产成人精品二区| 免费看日本二区| 中出人妻视频一区二区| 99热全是精品| 国产精品一区www在线观看| 乱系列少妇在线播放| 51国产日韩欧美| 最近的中文字幕免费完整| 岛国在线免费视频观看| 国产高清有码在线观看视频| 一区二区三区四区激情视频 | 看片在线看免费视频| 亚洲无线观看免费| 黄色日韩在线| 国产精品1区2区在线观看.| 国产黄片美女视频| 日韩欧美 国产精品| 久久久午夜欧美精品| 久久99蜜桃精品久久| 日本五十路高清| 在线观看一区二区三区| 成人三级黄色视频| 国产亚洲5aaaaa淫片| 看非洲黑人一级黄片| 亚洲国产欧洲综合997久久,| 国产一区二区在线av高清观看| 狂野欧美激情性xxxx在线观看| 国产精品三级大全| 青青草视频在线视频观看| 少妇裸体淫交视频免费看高清| 一个人观看的视频www高清免费观看| 久久九九热精品免费| 又爽又黄无遮挡网站| 亚洲久久久久久中文字幕| 亚洲不卡免费看| 成人一区二区视频在线观看| 特级一级黄色大片| 伦理电影大哥的女人| 插逼视频在线观看| 欧美日韩一区二区视频在线观看视频在线 | 色视频www国产| 尤物成人国产欧美一区二区三区| 欧美潮喷喷水| 国产精品人妻久久久久久| 久久鲁丝午夜福利片| 天堂中文最新版在线下载 | 在线观看66精品国产| 欧美区成人在线视频| 精品人妻偷拍中文字幕| 国产亚洲5aaaaa淫片| 久久精品夜夜夜夜夜久久蜜豆| 美女黄网站色视频| 国产精品女同一区二区软件| 国产黄片视频在线免费观看| 99riav亚洲国产免费| 国产黄色视频一区二区在线观看 | 国产日本99.免费观看| 中文字幕免费在线视频6| 联通29元200g的流量卡| 国产成人一区二区在线| 一级黄色大片毛片| 男人舔奶头视频| 色噜噜av男人的天堂激情| 国产亚洲91精品色在线| 在线观看美女被高潮喷水网站| 18禁裸乳无遮挡免费网站照片| 可以在线观看的亚洲视频| 亚洲欧美精品综合久久99| 精品久久久噜噜| 国产精品99久久久久久久久| 精品不卡国产一区二区三区| 成人毛片60女人毛片免费| 18禁黄网站禁片免费观看直播| 免费不卡的大黄色大毛片视频在线观看 | 日本撒尿小便嘘嘘汇集6| 中文在线观看免费www的网站| 看片在线看免费视频| 成人免费观看视频高清| 天天操日日干夜夜撸| 哪个播放器可以免费观看大片| 777米奇影视久久| 欧美性感艳星| 久久国内精品自在自线图片| 熟女人妻精品中文字幕| 欧美3d第一页| 欧美精品高潮呻吟av久久| 人妻一区二区av| 免费观看av网站的网址| 日本与韩国留学比较| 女人精品久久久久毛片| 91久久精品国产一区二区三区| 亚洲成人手机| 99热6这里只有精品| 特大巨黑吊av在线直播| 日本欧美视频一区| 久久精品人人爽人人爽视色| 欧美精品人与动牲交sv欧美| av免费观看日本| 日韩三级伦理在线观看| 欧美少妇被猛烈插入视频| 国产精品久久久久久av不卡| 欧美日韩av久久| 精品亚洲成a人片在线观看| 日韩在线高清观看一区二区三区| 成年人免费黄色播放视频| a级毛片在线看网站| 免费观看a级毛片全部| 国产免费现黄频在线看| 日本免费在线观看一区| 亚洲av成人精品一二三区| 成人漫画全彩无遮挡| 国产免费一区二区三区四区乱码| 日韩亚洲欧美综合| 麻豆精品久久久久久蜜桃| 在线观看免费视频网站a站| 最近中文字幕2019免费版| 99热网站在线观看| 国产精品欧美亚洲77777| 亚洲精品av麻豆狂野| av女优亚洲男人天堂| 久久精品久久久久久久性| 成年av动漫网址| 国产精品人妻久久久久久| 国产成人精品久久久久久| 精品国产乱码久久久久久小说| 免费久久久久久久精品成人欧美视频 | 国产精品麻豆人妻色哟哟久久| 欧美变态另类bdsm刘玥| 大陆偷拍与自拍| 欧美精品一区二区免费开放| 中文精品一卡2卡3卡4更新| 国产综合精华液| 老司机影院成人| 亚洲美女搞黄在线观看| 少妇的逼水好多| 精品熟女少妇av免费看| 亚洲精品,欧美精品| 久久久国产一区二区| 国精品久久久久久国模美| 中文字幕精品免费在线观看视频 | 97精品久久久久久久久久精品| 丝袜喷水一区| 看免费成人av毛片| 国产免费一级a男人的天堂| 精品久久久久久电影网| 国产高清国产精品国产三级| 一本大道久久a久久精品| 晚上一个人看的免费电影| 18+在线观看网站| 国产av精品麻豆| 九九久久精品国产亚洲av麻豆| av在线播放精品| 飞空精品影院首页| 热99久久久久精品小说推荐| 精品国产露脸久久av麻豆| 日韩伦理黄色片| 黄片播放在线免费| 国产精品99久久99久久久不卡 | 国产高清三级在线| 人妻制服诱惑在线中文字幕| freevideosex欧美| 亚洲综合色网址| 中文字幕av电影在线播放| 亚洲欧美一区二区三区国产| 国产高清三级在线| 伦理电影大哥的女人| 亚洲av国产av综合av卡| 亚洲精品色激情综合| 亚洲欧美清纯卡通| 欧美成人午夜免费资源| 午夜福利,免费看| 人妻夜夜爽99麻豆av| 久久久久久久久大av| 最近中文字幕高清免费大全6| 午夜激情av网站| 久久久国产欧美日韩av| 日韩成人伦理影院| 成人毛片60女人毛片免费| 亚洲美女视频黄频| 日本av手机在线免费观看| 狂野欧美激情性bbbbbb| 一级爰片在线观看| 99国产综合亚洲精品| 视频区图区小说| 亚洲精品久久午夜乱码| 国产亚洲一区二区精品| 亚洲性久久影院| av在线观看视频网站免费| 一边亲一边摸免费视频| 一本久久精品| 中文字幕制服av| 尾随美女入室| 免费高清在线观看视频在线观看| 国产亚洲最大av| 久久人人爽人人片av| 国产淫语在线视频| 寂寞人妻少妇视频99o| 免费不卡的大黄色大毛片视频在线观看| 欧美日韩视频高清一区二区三区二| 黄色视频在线播放观看不卡| 美女中出高潮动态图| 国产成人精品无人区| 国产精品国产三级国产av玫瑰| 一级毛片我不卡| 免费黄频网站在线观看国产| 夫妻性生交免费视频一级片| 国产成人免费观看mmmm| 日韩免费高清中文字幕av| 黑人巨大精品欧美一区二区蜜桃 | 国产免费现黄频在线看| 少妇人妻 视频| 亚洲成人手机| 成年av动漫网址| 老司机影院毛片| av免费在线看不卡| 美女cb高潮喷水在线观看| 亚洲欧美色中文字幕在线| 国产成人精品无人区| 91久久精品国产一区二区三区| 亚洲欧美日韩另类电影网站| 91精品一卡2卡3卡4卡| 日本与韩国留学比较| 欧美日韩视频高清一区二区三区二| 热re99久久精品国产66热6| 一边摸一边做爽爽视频免费| av专区在线播放| 超色免费av| 卡戴珊不雅视频在线播放| 亚洲少妇的诱惑av| 中文字幕人妻丝袜制服| 亚洲综合色网址| 国产黄色视频一区二区在线观看| 亚洲av成人精品一区久久| 久久热精品热| 天美传媒精品一区二区| 国产精品久久久久久久久免| 国产精品99久久久久久久久| 亚洲天堂av无毛| 高清不卡的av网站| 中文字幕人妻熟人妻熟丝袜美| 日本黄大片高清| 色哟哟·www| 亚洲五月色婷婷综合| 欧美老熟妇乱子伦牲交| 一级,二级,三级黄色视频| 久久影院123| 女的被弄到高潮叫床怎么办| 成人免费观看视频高清| 十分钟在线观看高清视频www| 国产老妇伦熟女老妇高清| av在线老鸭窝| 寂寞人妻少妇视频99o| 大片电影免费在线观看免费| 男人爽女人下面视频在线观看| 人妻 亚洲 视频| 成人手机av| 少妇猛男粗大的猛烈进出视频| 少妇精品久久久久久久| 满18在线观看网站| 一级毛片电影观看| 日本黄色片子视频| 国产成人精品福利久久| 最近最新中文字幕免费大全7| a 毛片基地| 91精品三级在线观看| 一区二区av电影网| 国产精品嫩草影院av在线观看| 国产淫语在线视频| 国产黄色免费在线视频| 免费大片18禁| 三上悠亚av全集在线观看| 九九在线视频观看精品| 国产精品欧美亚洲77777| 亚洲av综合色区一区| 波野结衣二区三区在线| 在线观看三级黄色| 韩国av在线不卡| 欧美激情极品国产一区二区三区 | 免费人妻精品一区二区三区视频| 亚洲综合色网址| 亚洲欧美日韩另类电影网站| 又黄又爽又刺激的免费视频.| 午夜福利在线观看免费完整高清在| 国产视频首页在线观看| av线在线观看网站| 久久99一区二区三区| xxxhd国产人妻xxx| 国产色爽女视频免费观看| 人妻夜夜爽99麻豆av| 黄片播放在线免费| av在线app专区| 国产黄色免费在线视频| 91在线精品国自产拍蜜月| 乱人伦中国视频| 22中文网久久字幕| 丰满迷人的少妇在线观看| 丝瓜视频免费看黄片| 91久久精品电影网| 成人影院久久| 另类精品久久| 欧美三级亚洲精品| 国产成人精品婷婷| av女优亚洲男人天堂| 午夜福利,免费看| 国产成人91sexporn| 国产精品久久久久久av不卡| 亚洲国产精品国产精品| 午夜福利在线观看免费完整高清在| 夫妻午夜视频| 久久久久久久国产电影| 狠狠婷婷综合久久久久久88av| 亚洲内射少妇av| 国产精品久久久久久精品古装| 精品国产一区二区三区久久久樱花| 少妇的逼好多水| 香蕉精品网在线| 日本免费在线观看一区| 成人18禁高潮啪啪吃奶动态图 | 国产成人freesex在线| 色婷婷av一区二区三区视频| 亚洲欧美中文字幕日韩二区| 少妇高潮的动态图| 各种免费的搞黄视频| 97精品久久久久久久久久精品| 成人免费观看视频高清| 中国三级夫妇交换| 天堂俺去俺来也www色官网| 最近中文字幕2019免费版| 97在线视频观看| 内地一区二区视频在线| 我的老师免费观看完整版| 国产黄片视频在线免费观看| 欧美精品高潮呻吟av久久| av免费观看日本| 美女国产高潮福利片在线看| 欧美+日韩+精品| 国产精品国产三级国产av玫瑰| 人妻系列 视频| 99视频精品全部免费 在线| 久久影院123| 国产日韩欧美亚洲二区| 国产精品国产三级专区第一集| 午夜福利视频精品| 亚洲精品久久成人aⅴ小说 | 国产精品欧美亚洲77777| 在线亚洲精品国产二区图片欧美 | 欧美日韩av久久| 国产精品一区二区三区四区免费观看| 亚洲国产欧美在线一区| 欧美 日韩 精品 国产| 欧美精品一区二区大全| 高清不卡的av网站| 精品人妻在线不人妻| 99热网站在线观看| 久久精品国产亚洲网站| 肉色欧美久久久久久久蜜桃| 亚洲精品久久午夜乱码| 精品视频人人做人人爽| 久久久久精品久久久久真实原创| 下体分泌物呈黄色| 亚洲av二区三区四区| 久久午夜综合久久蜜桃| 国产日韩欧美亚洲二区| 中文欧美无线码| 亚洲国产精品成人久久小说| 精品少妇黑人巨大在线播放| 五月玫瑰六月丁香| 国产爽快片一区二区三区| 亚洲精品乱码久久久久久按摩| 成人亚洲精品一区在线观看| 夫妻午夜视频| 国产精品麻豆人妻色哟哟久久| 男女边摸边吃奶| 国产av国产精品国产| 如何舔出高潮| 亚洲欧美成人精品一区二区| 国产欧美日韩一区二区三区在线 | 蜜臀久久99精品久久宅男| 一本—道久久a久久精品蜜桃钙片| 大片免费播放器 马上看| 99热网站在线观看| 大话2 男鬼变身卡| 九九久久精品国产亚洲av麻豆| 三级国产精品片| 丰满少妇做爰视频| 久久精品国产a三级三级三级| 亚洲精品,欧美精品| 国产片特级美女逼逼视频| 国产男女超爽视频在线观看| 天美传媒精品一区二区| 亚洲丝袜综合中文字幕| 久久精品久久久久久噜噜老黄| 另类精品久久| 亚洲精品久久久久久婷婷小说| 99久久精品国产国产毛片| 久久久国产精品麻豆| 久久影院123| 久久狼人影院| 久久久久久伊人网av| 建设人人有责人人尽责人人享有的| 人人妻人人澡人人爽人人夜夜| av一本久久久久| 久久精品熟女亚洲av麻豆精品| 少妇人妻久久综合中文| 日本黄色片子视频| 22中文网久久字幕| 久久国内精品自在自线图片| 波野结衣二区三区在线| 亚洲精品av麻豆狂野| 国产伦理片在线播放av一区| 2018国产大陆天天弄谢| 国产日韩欧美在线精品| 七月丁香在线播放| 亚洲av不卡在线观看| 大香蕉久久成人网| 亚洲欧美中文字幕日韩二区| 你懂的网址亚洲精品在线观看| 激情五月婷婷亚洲| 亚洲精品国产av蜜桃| 亚洲成色77777| 中国国产av一级| 少妇的逼水好多| 免费久久久久久久精品成人欧美视频 | 亚洲精品aⅴ在线观看| 国产精品久久久久久av不卡| 日韩,欧美,国产一区二区三区| 黄片播放在线免费| 赤兔流量卡办理| 九色成人免费人妻av| 一级爰片在线观看| 我的女老师完整版在线观看| 蜜桃久久精品国产亚洲av| 亚洲熟女精品中文字幕| a级毛色黄片| 日韩一本色道免费dvd| 免费日韩欧美在线观看| 性高湖久久久久久久久免费观看| 9色porny在线观看| 国产精品国产av在线观看| 亚洲内射少妇av| 国产日韩欧美在线精品| 国产精品国产三级国产av玫瑰| 精品亚洲乱码少妇综合久久| 26uuu在线亚洲综合色| 91精品国产九色| 美女主播在线视频| a级毛色黄片| 18在线观看网站| 久久人人爽人人片av| 国产精品 国内视频| 国产精品熟女久久久久浪| 大香蕉久久网| 国产精品久久久久久av不卡| 看免费成人av毛片| 久久精品久久精品一区二区三区| 一本一本久久a久久精品综合妖精 国产伦在线观看视频一区 | av在线播放精品| 日韩在线高清观看一区二区三区| av一本久久久久| 成人午夜精彩视频在线观看| 菩萨蛮人人尽说江南好唐韦庄| 久久久久久久国产电影| 国产精品无大码| 欧美丝袜亚洲另类| 国产精品99久久久久久久久| 日韩制服骚丝袜av| 熟妇人妻不卡中文字幕| 少妇丰满av| 久久久久久人妻| 亚洲欧洲国产日韩| 极品少妇高潮喷水抽搐| 中国三级夫妇交换| 又黄又爽又刺激的免费视频.| 色婷婷av一区二区三区视频| 精品亚洲乱码少妇综合久久| 国产精品秋霞免费鲁丝片| 丝瓜视频免费看黄片| 精品国产一区二区久久| 亚洲图色成人| 菩萨蛮人人尽说江南好唐韦庄| 国产亚洲av片在线观看秒播厂| 一本色道久久久久久精品综合| av在线老鸭窝| 午夜激情久久久久久久| 国产免费又黄又爽又色| 国产一区亚洲一区在线观看| av在线app专区| 国产欧美另类精品又又久久亚洲欧美| 亚洲第一av免费看| 中文精品一卡2卡3卡4更新| h视频一区二区三区| 一级毛片电影观看| 国产伦理片在线播放av一区| 亚洲精品国产色婷婷电影| 少妇的逼水好多| 搡老乐熟女国产| 精品人妻熟女毛片av久久网站| 国产黄片视频在线免费观看| 欧美日本中文国产一区发布| 丝袜美足系列| 色网站视频免费| 日韩欧美精品免费久久| 亚洲欧美精品自产自拍| a 毛片基地| 这个男人来自地球电影免费观看 | 亚洲国产毛片av蜜桃av| 国产男女内射视频| 熟女av电影| 国产黄片视频在线免费观看| 色94色欧美一区二区| 日韩免费高清中文字幕av| 人成视频在线观看免费观看| 狂野欧美激情性bbbbbb| 黄片无遮挡物在线观看| 中文字幕免费在线视频6| 九九久久精品国产亚洲av麻豆| 老司机亚洲免费影院| 91久久精品电影网| 国产视频内射| 日韩精品有码人妻一区| 国产亚洲av片在线观看秒播厂| 亚洲内射少妇av| 亚洲欧美成人精品一区二区| 啦啦啦中文免费视频观看日本| 国产精品.久久久| 欧美日韩国产mv在线观看视频| 精品国产露脸久久av麻豆| 国产 精品1| 一级,二级,三级黄色视频| 麻豆精品久久久久久蜜桃| 最黄视频免费看| 蜜桃久久精品国产亚洲av| 免费不卡的大黄色大毛片视频在线观看| 久久狼人影院| 美女xxoo啪啪120秒动态图| 性高湖久久久久久久久免费观看| 国产精品久久久久成人av| 中文字幕人妻丝袜制服| 国产老妇伦熟女老妇高清| 亚洲精品亚洲一区二区| 999精品在线视频| 免费播放大片免费观看视频在线观看| 国产高清三级在线|