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      Short-term power generation scheduling rules for cascade hydropower stations based on hybrid algorithm

      2012-08-16 09:04:01WeiXIEChangmingJIZijunYANGXiaoxingZHANG
      Water Science and Engineering 2012年1期

      Wei XIE*, Chang-ming JI, Zi-jun YANG, Xiao-xing ZHANG

      1. Beijing Key Laboratory of New and Renewable Energy, North China Electric Power University, Beijing 102206, P. R. China

      2. Hydrochina Kunming Engineering Corporation, Kunming 650051, P. R. China

      3. Jinsha River Hydropower Development Co., Ltd., Kunming 650228, P. R. China

      Short-term power generation scheduling rules for cascade hydropower stations based on hybrid algorithm

      Wei XIE*1, Chang-ming JI1, Zi-jun YANG2, Xiao-xing ZHANG3

      1. Beijing Key Laboratory of New and Renewable Energy, North China Electric Power University, Beijing 102206, P. R. China

      2. Hydrochina Kunming Engineering Corporation, Kunming 650051, P. R. China

      3. Jinsha River Hydropower Development Co., Ltd., Kunming 650228, P. R. China

      Power generation dispatching is a large complex system problem with multi-dimensional and nonlinear characteristics. A mathematical model was established based on the principle of reservoir operation. A large quantity of optimal scheduling processes were obtained by calculating the daily runoff process within three typical years, and a large number of simulated daily runoff processes were obtained using the progressive optimality algorithm (POA) in combination with the genetic algorithm (GA). After analyzing the optimal scheduling processes, the corresponding scheduling rules were determined, and the practical formulas were obtained. These rules can make full use of the rolling runoff forecast and carry out the rolling scheduling. Compared with the optimized results, the maximum relative difference of the annual power generation obtained by the scheduling rules is no more than 1%. The effectiveness and practical applicability of the scheduling rules are demonstrated by a case study. This study provides a new perspective for formulating the rules of power generation dispatching.

      scheduling rule; short-time power generation dispatching; hybrid algorithm; cascade hydropower station

      1 Introduction

      Two conventional approaches can be used to obtain the optimal scheduling of power generation in cascade hydropower stations. One is the reservoir operation chart (Yang et al. 2010; Yu et al. 2010; Chen et al. 2007). However, the latest results of runoff prediction cannot be used with this method, and the scheduling results are too conservative to represent the advantages and economic benefits of scheduling of cascade hydropower stations. Alternatively, a basic scheduling process can be obtained using a variety of traditional algorithms or intelligent algorithms based on the long-term data series of runoff. Yoo (2009) applied a linear programming method to maximize hydropower energy generation. Pérez-Díaz et al. (2010) proposed nonlinear programming based on a scheduling model for solving short-termoperation scheduling of a hydropower plant. Li et al. (2009) used the immune algorithm-based particle swarm optimization (PSO) for optimized load distribution among cascade hydropower stations. Similar studies have been reported by Mandal and Chakraborty (2011) for solving combined economic emission scheduling of hydrothermal systems with cascade reservoirs using the PSO algorithm, and by Hota et al. (2009) for solving short-term optimal hydrothermal scheduling using an improved PSO technique. Lakshminarasimman and Subramanian (2008) developed a modified hybrid differential evolution algorithm for short-term scheduling of hydrothermal power systems with cascade reservoirs. Yuan and Yuan (2006) proposed a new cultural algorithm to solve the optimal daily generation scheduling of hydrothermal power systems. Liang (1999) applied grey relation analysis to hydroelectric generation scheduling. Huang (1998) applied the genetic-embedded fuzzy system approach to hydroelectric generation scheduling. Liang and Hsu (1995) developed a hybrid artificial neural network-differential dynamic programming approach for short-term hydroelectric scheduling.

      It is observed from the above literature review that although many studies have provided the basic rules of reservoir operation, only some general conclusions have been obtained, there have been very few studies on the clearly different scheduling rules for the different varieties of runoff, and the feasibility of the methods is relatively poor. In order to improve the short-term power generation scheduling rules of cascade hydropower stations on the Jinsha River, studies on the practical and effective scheduling rules were carried out using the progressive optimality algorithm (POA) in combination with the genetic algorithm (GA).

      2 Mathematical model

      In this study, the maximum power output during the scheduling period was regarded as the objective. Thus the objective function can be expressed as follows:

      whereEis the total generated energy,Gis the number of cascade hydropower stations,Tis the number of time intervals (Δt),Pi,tis the average output of theith hydropower station in thetth time interval,Kiis the output coefficient of theith hydropower station,Qi,tis the power flow of theith hydropower station in thetth time interval, andHi,tis the water head of theith hydropower station in thetth time in terval.

      The objective function is subjected to the following constraints:

      (1) Water balance equations:

      whereVi,tandVi,t+1are, respectively, the storage capacity of theith hydropower station in thetth and (t+1)th time intervals;Ii,tandare the reservoir inflow and outflow of theith hydropower station in thetth time interval,respectively;Si,tandare the surplus flow andregion inflow of theith hydropower station in thetth time interval, respectively; andτiis the water flow’s travel time between the (i-1)th andith hydropower stations.

      (2) Storage capacity constraint:

      whereViminis the dead storage of theith hydropower station, andVimaxis the storage corresponding to the normal water level of theith hydropower station. During the flood season,Vimaxis the storage corresponding to the limiting water level.

      (3) Power constraint:

      whereNi,tis the actual output of theith hydropower station in thetth time interval, andNiminandNimaxare the highest and lowest outputs of theith hydropower station, respectively.

      (4) Discharge constraint:

      whereQiminis the minimum ecological flow of theith hydropower station determined by the water resources department, andQimaxis the permitted maximum discharge flow of theith hydropower station to guaranteethe flood control security of downstream region.

      3 Hybrid algorithm and computational process

      The hybrid algorithm adopts GA in the inner loop and POA in the outer loop, integrating the advantages of traditional algorithms and intelligent algorithms. GAs were proposed by Holland (1975) as an abstraction of biological evolution, drawing on ideas from natural evolution and genetics for the design and implementation of robust adaptive systems. GAs have been used to optimize the reservoir operation because of their potential as optimization techniques for complex functions (Goldberg 1989; Romero and Carter 2001). Studies of POA for reservoir operation were reported by Nanda et al. (1986) and Xuan et al. (2009). The calculation steps of the hybrid algorithm are as follows:

      Step 1: The initial water level trajectory of each hydropower station is determined. It can be the dead water level or the normal water level.zi,0,zi,1,zi,2,…,zi,Tis defined as the initial water level trajectory of theith hydropower station, wherezi,j(i=1, 2,…,G;j=1, 2,…,T)is the water level of theith hydropower station at time pointj.

      Step 2: The optimal output process of each hydropower station is sought from upstream to downstream. Considering theith (1≤i≤G) hydropower station as an instance, the water levelzi,0at time point zero andzi,2at time point 2 must be fixed, and then the water levelzi,1at time point 1 can be adjusted using GA to get the maximum generated energy during the zero time interval and 1st time interval. Thus, after optimizing, the water level trajectory of theith hydropower station is changed tozi,0,zi′,1,zi,2,…,zi,T(1≤i≤G).

      Step 3: Similarly, the water level in next time point is adjusted. The water levelzi′,1at time point 1 andzi,3at time point 3 must be fixed, and then the water levelzi,2at time point 2can be adjusted using GA to get the maximum generated energy during the 1st time interval and the 2nd time interval. Thus, after optimizing, the water level trajectory of theith hydropower station is changed to(1≤i≤G).

      Step 4: Step 3 is repeated until the iteration times reach the number of time intervals (T). Based on initial conditions and the constraint conditions of the cascade hydropower station, the stage hydrograph, output process, outflow process, and the total output of this cascade hydropower station can be obtained.

      Step 5: The water level trajectory is initialized again using the latest stage hydrograph, and then the process returns to step 2.

      Step 6: If the convergence condition that the difference in total output of the cascade hydropower station between adjacent iterations reaches the specified precision is met, the process is over. Otherwise, it returns to step 5. The flow chart of the hybrid algorithm is presented in Fig. 1.

      Fig. 1 Flow chart of hybrid algorithm

      4 Scheduling rules for cascade hydropower stations in Jinsha River

      Taking six hydropower stations on the Jinsha River as examples, the steps forestablishing the scheduling rules are as follows: First, based on the mathematical model, the daily runoff process in three typical years and large numbers of simulated daily runoff processes are analyzed using the hybrid algorithm to obtain the corresponding optimal scheduling processes. Second, these optimal results are summarized using the principles of statistics, and then the specific scheduling rules under different conditions of cascade hydropower stations are given. Finally, according to expert experience, those scheduling rules are formulated in the form of experience formulas which are very convenient for guiding the short-term power generation scheduling of cascade hydropower stations.

      The Jinsha River is the upper reaches of the Yangtze River. The cascade hydropower station studied in this study is located on the middle reaches of the Jinsha River. It includes six hydropower stations: Liyuan, Ahai, Jinanqiao, Longkaikou, Ludila, and Guanyinyan hydropower stations from upstream to downstream. Characteristic parameters of six hydropower stations on the Jinsha River are listed in Table 1. The scheduling period of this cascade hydropower station is one year, and the length of time intervals is one day, so the number of time intervals is 364, and the space is relatively far between hydropower stations. Thus,did not need to be considered in this study.

      Table 1 Characteristic parameters of six hydropower stations

      4.1 Basic principle and normal operation for short-term power generation scheduling

      4.1.1 Basic principle

      Based on the power system load requirements, the water level of the reservoir which has weekly or daily regulation capacity should be maintained at the high water level as far as possible. In other words, the water level should be maintained at the normal water level during the non-flood season and at the limited water level during the flood season as far as possible. If the flood process is more than that needed for generating the expected output according to the short-term runoff forecast, part of the regulation storage capacity of the reservoir should be vacated early to store this flood. Nevertheless, the water level must be return to the high water level at the end of the flood process as soon as possible.

      4.1.2 Normal operation

      If the storage capacity of cascade reservoirs needs to be vacated early before the flood season, it should start from the upstream reservoirs and move to the downstream reservoirs. However, at the end of flood season, the water levels of these reservoirs must be return to the high water level in time, following a sequence from downstream to upstream.

      4.2 Power generation scheduling rules of cascade hydropower stations

      After analyzing the optimal results obtained by the hybrid algorithm, the power generation scheduling rules can be determined. To better guide the operation of hydropower stations, the scheduling period can be divided into a dry-flood transition period and general period. The length of the former is a variable, meaning that the values at different hydropower stations are different, and it will be further explained later. Naturally, the scheduling period, in addition to the dry-flood transition period, is defined as general period.

      4.2.1 Rules during general period

      The forecast period means the period of validity of runoff prediction. If the natural runoffs of these six stations are all less than those needed for generating the expected output during the forecast period according to the runoff prediction, the cascade hydropower stations should be in normal operation. However, if the natural runoff of any station is more than that needed for generating the expected output during the forecast period according to the runoff prediction, the six hydropower stations need joint pre-discharge scheduling.

      When adopting joint pre-discharge scheduling, the termination time needs to be accurately determined. First, the final time for each station in which the natural runoff is more than that needed for generating the expected output during the forecast period is determined according to the runoff prediction. Then, the termination time is equal to the final time which is closest to the future time. Here,Nis defined as the time interval between current time and the termination time. To sum up, the cascade hydropower stations should carry out the pre-discharge scheduling during the time intervalN, and the normal operation after termination time. Moreover, the water level of each reservoir needs to return to the high water level in the termination time. Steps of pre-discharge scheduling are as follows:

      Step 1: The average dischargethat can guarantee that the water level of Liyuan Hydropower Station reaches the high water level at the termination time is determined. Then, it is assumed that Liyuan Hydropower Station generates electricity using, while the other five hydropower stations downstream generate electricity only by use of actual flow, and these five reservoirs’ storage remains unchanged. Based on this assumption, the operation rules of the cascade hydropower stations are given:

      (1) If there is surplus water released from the Liyuan Reservoir, the Liyuan Reservoir should generate the expected output power during the forecast period. In other words, the inflow of the Liyuan Reservoir is relatively abundant.

      (2) If the Liyuan Reservoir has no surplus water while the other five reservoirs downstream have, the Liyuan Reservoir should generate electricity within every time interval during the forecast period, and the operation of the downstream stations will be further formulated.

      (3) If all the reservoirs have no surplus water, the minimum dischargeQminthat can guarantee that the water level of the Liyuan Reservoir reaches the high water level at the termination time is determined under the condition that the other five reservoirs downstream have no surplus water when generating electricity with the actual inflow.Qminis regarded as the discharge of the Liyuan Reservoir in every time interval during the forecast period. For the Liyuan Reservoir, if the output generated byQminis less than the basic required output, Liyuan Hydropower Station must run in accordance with the basic output requirements.

      Step 2: The sum of the discharge of the Liyuan Reservoir and the corresponding predicted local inflow is regarded as the inflow of the hydropower stations downstream.

      Step 3: The hydropower stations downstream are treated as a new cascade. The discharge of Ahai Hydropower Station in each time interval during the forecast period is obtained using the method used for Liyuan Hydropower Station. Similarly, the discharges of the other four hydropower stations, Jinanqiao, Longkaikou, Ludila, Guanyinyan, during the forecast period, are calculated.

      The specific calculation process and formulas are shown in Fig. 2. In Fig. 2,is the average discharge that can guarantee that the water level of theith hydropower station reaches the high water level at the termination time;is the runoff of theith hydropower station needed for generating expected output;is the natural inflow of theith hydropower station in thejth time interval obtained by the runoff prediction;Wiis the change value of storage capacity of theith hydropower station during the time intervalN, and usually zero or negative;is the allowed discharge of theith hydropower station in thejth time interval;is the local inflow of thesth hydropower station in thejth time interval;qi,tis the discharge of theith hydropower station in thetth time interval;is the discharge of theith hydropower station in thejth time interval for the initial scheduling decision;is the discharge of theith hydropower station that meets the basic output requirements;is the final discharge flow of theith hydropower station in thejth time interval;mis the number of cascade hydropower stations (2≤m≤G);Zi,jis the water level of theith hydropower station in thejth time interval; andandare the minimum and the maximum allowed water levels of theith hydropower station in thejth time interval, respectively.

      When using the formulas in Fig. 2, we need to pay attention to the following:

      (1) When calculating, the upstream water level of the reservoir is the average value of the water level at the current time and the expected water level at the end of the scheduling time. Generally, the expected water level is the normal water level and the limited water level in the flood season.

      Fig. 2 Calculation process and formulas during general period

      (2) In terms of the generation scheduling of the downstream station, the predicted inflow is actually the sum of the discharge of the farthest upstream station and the corresponding predicted local inflow.

      (3) The calculation order ofqi,tshould be from the farthest upstream station to farthest downstream station according to chronological order. In other words, it is not until all discharges of theith station during forecast period have been obtained that the calculation for (i+1)th station is carried out.

      4.2.2 Rules during dry-flood transition period

      Based on Table 1, it is clear that almost all hydropower stations have the limited water level in July. Guanyinyan Hydropower Station has the limited water level in August as well. Through analysis of the optimized operation results, it is known that before the flood season in July, even in a wet year, the water levels of these six hydropower stations can regress from the normal water level to the limited water level through increasing output in around a total of 17 days. To better explain the length of the dry-flood transition period which is a variable mentioned above, an example is given: Suppose that the water levels of cascade hydropower stations can regress from the normal water level to the limited water level in five days before the flood season in July, then the period from June 25 to June 30 is identified as the dry-flood transition period. Thus, it is easy to learn that the dry-flood transition period of the cascade in this study is June 13-30. This dynamic partitioning is simple and universal.

      The scheduling rules during the dry-flood transition period are as follows:

      Step 1: As the limitation of short-term runoff forecast, the forecast period is shorter. Taking into account the feasibility and applicability, the average discharge in the forecast period is regarded as the average discharge in the time intervalM. Here,Mis the time interval between the current time and the starting time of the flood season.

      Step 2: The required time that the water level of these six stations regresses from the current level to the limited level is calculated when Guanyinyan Hydropower Station runs with the flow discharge needed for generating the expected output power.

      Step 3: If the required time is shorter thanM, the scheduling rules are the same as those during the general period. Otherwise, the rules during the dry-flood transition period are as follows: the farthest downstream station of the cascade (Guanyinyan Station) generates the expected output power, and the other five stations upstream generate electricity all by using the maximum discharge that can ensure that the next station has no surplus water. It must be noted that the order of scheduling should be from upstream to downstream.

      The specific calculation process and formulas are shown in Fig. 3. In Fig. 3,is the average discharge needed when the water level of the farthest downstream station (Guanyinyan Station) declines to the limited water level,Qmeis the discharge of the farthest downstream station that can generate the expected output,T1is the runoff forecast period,Kis the total time interval between current time and the starting time of flood season,T′ is the time needed for the water levels of all reservoirs to regress from the current water level to the limited water level when the farthest downstream station generates the expected output, andTuis the length of the unit time interval.

      5 Results verification

      Fig. 3 Calculation process and formulas during dry-flood transition period

      The data used is the daily runoff process within three typical years and a large number of simulated daily runoff processes. The computational processes have been given in Section 3. In this study, the results of the normal year are shown in figures for analyzing the operation processes. Comparison of the simulated operation processes of all hydropower stations based on the scheduling rules and the optimized operation processes obtained by the hybrid algorithm are shown in Fig. 4. However, these figures mostly refer to the processes between June and September because the scheduling processes of other months are almost unchanged. In other words, the water levels basically remain at the high water level. The comparison of power generation in three typical years is listed in Table 2 as well.

      Table 2 Comparison of power generation in three typical years

      Fig. 4 Comparison of optimized operation processes with simulated operation processes

      The following observations are made from the comparative study of the simulated operation and the optimized operation:

      (1) It is concluded from Fig. 4 that the output processes and the water level processes of all hydropower stations according to scheduling rules are basically the same as those optimized results.

      (2) Regarding to Liyuan Hydropower Station (Fig. 4(a)) and Longkaikou Hydropower Station (Fig. 4(d)), the starting time of pre-discharge scheduling of simulated operation is June 22 or so, while the starting time is around June 25 for optimized operation. Owing to the water levels of the two hydropower stations prematurely regressing from the normal water level to the limited water level, power generation from the two stations decreases. As shown in Table 2, the power generation decrease 0.16 × 108kW·h at Liyuan Hydropower Station, 0.456 × 108kW·h at Longkaikou Hydropower Station, and 1.081 × 108kW·h at Guanyinyan Hydropower Station in a normal year. Another reason for the power generation reduction of Longkaikou Hydropower Station may be that the pre-discharge scheduling is not adopted between August 30 and September 15. With regard to Guanyinyan Hydropower Station (Fig. 4(f)), the main reason for the power generation reduction may be that the pre-discharge scheduling is not adoptedbetween August 25 and September 10.

      (3) Increase in the power generation of simulated operation at Ahai Hydropower Station (Fig. 4(b)) and Jinanqiao Hydropower Station (Fig. 4(c)) may be attributed to the better control of the water level during the flood season. For example, the water level of Jinanqiao Hydropower Station decreased from 1 418 m to 1 405 m when the optimized operation was adopted between June 20 and July 1, while it decreased only from 1 418 m to 1 409.9 m when the simulated operation was adopted between June 16 and June 24. As shown in Table 2, the power generation increases 0.326 × 108kW·h at Ahai Hydropower Station, and 0.209 × 108kW·h at JinAnqiao Hydropower Station in a normal year.

      (4) All hydropower stations have adopted the joint pre-discharge scheduling before the cascade hydropower stations enter into the flood season according to the runoff prediction.

      (5) It can be shown from Table 2 that the results of annual power generation obtained by the scheduling rules are quite close to the optimized operation results. For a single hydropower station, the minimum relative difference of annual power generation is only 0.09% (Jinanqiao Hydropower Station in a dry year), and the maximum is also no more than 1% (Longkaikou Hydropower Station in a dry year). For cascade hydropower stations, the maximum relative difference of the total annual power generation is just 0.36% (in a dry year), and the relative differences in a wet year and normal year are smaller.

      6 Conclusions

      Through analysis of large numbers of optimized scheduling processes, this study highlights the short-time power generation scheduling rules for cascade hydropower stations. After further refining and summarizing these rules, a set of simple and practical formulas are eventually provided. Compared with many previous studies, the principle of the rules is so clear that it is easy to understand and the feasibility is relatively high. Moreover, compared with the optimized operation, these rules have high accuracy with a relative difference of less than 1% in annual power generation. Being different from the conventional optimal generation rules for hydropower stations, the rules can take full advantage of the rolling runoff forecast and carry out the rolling scheduling. In this way, the prediction error of a runoff forecast can be revised, and the negative impact on power generation dispatching is effectively reduced. The accuracy of the results is verified by a case study. Furthermore, the application of these formulas can be easily extended because of the simple form and specific meaning. Therefore, this study provides a new perspective in formulating the rules of power generation dispatching.

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      This work was supported by the National Key Basic Research Development Program of China (Grant No. 2002CCA00700).

      *Corresponding author (e-mail:yxa@cup.edu.cn)

      Received Jan. 7, 2011; accepted Oct. 11, 2011

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