Quasi-reflected ions motion optimization algorithm for short-term hydrothermal scheduling

被引:0
作者
Sujoy Das
Aniruddha Bhattacharya
Ajoy Kumar Chakraborty
机构
[1] NIT,Department of Electrical Engineering
来源
Neural Computing and Applications | 2018年 / 29卷
关键词
Quasi-reflected ions motion optimization algorithm; Short-term hydrothermal scheduling; Statistical analysis; Valve-point loading effect;
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学科分类号
摘要
This paper describes quasi-reflected ions motion optimization algorithm to solve the short-term hydrothermal scheduling problem. The aim of hydrothermal scheduling is to minimize the total cost of generation by optimizing power generation of several hydro and thermal units on an hourly basis. The algorithm mainly works on the principle that opposite charges attract each other and same charges repel each other. Two phases are employed in this algorithm, namely liquid phase and crystal phase, in order to perform exploration and exploitation. Furthermore, quasi-reflected-based learning scheme is incorporated to ions motion optimization algorithm, in order to increase the convergence speed as well as the quality of the solution. To investigate the performance of the ions motion optimization algorithm, the algorithm has been tested on seven test systems. The results obtained by the ions motion optimization algorithm have been compared with those obtained by many recently developed optimization techniques such as evolutionary programming, genetic algorithm, particle swarm optimization, differential evolution, artificial immune system, teaching–learning-based optimization, real-coded chemical-reaction-based optimization, cuckoo search algorithm and modified cuckoo search algorithm. Moreover, some statistical tests have been performed to evaluate the performance of ions motion optimization algorithm.
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页码:123 / 149
页数:26
相关论文
共 113 条
  • [1] Saha TN(1978)An application of a direct method to the optimal scheduling of hydrothermal systems IEEE Trans PAS 97 977-983
  • [2] Khaparde SA(1986)Optimal short term operation planning of a large hydrothermal power system based on a nonlinear network flow concept IEEE Trans PWRS 1 75-82
  • [3] Brannud H(1988)Optimal daily scheduling of cascaded plants using a new algorithm of non-linear minimum cost network flow concept IEEE Trans PWRS 3 929-935
  • [4] Bubenko JA(1998)Hydrothermal scheduling based Lagrangian relaxation approach to hydrothermal coordination IEEE Trans Power Syst 13 226-235
  • [5] Sjelvgren D(1996)Mixed-integer programming applied to short-term planning of a hydrothermal system IEEE Trans Power Syst 11 281-286
  • [6] Xia Q(1994)Short-term hydrothermal scheduling Part I: simulated annealing approach Proc Inst Electr Eng Gen Transm Distrib 141 497-501
  • [7] Xiang N(1994)Short-term hydrothermal scheduling Part II: parallel simulated annealing approach Proc Inst Electr Eng Gen Transm Distrib 141 502-506
  • [8] Wang S(1996)Genetic aided scheduling of hydraulically coupled plants in hydrothermal coordination IEEE Trans Power Syst 11 975-981
  • [9] Zhang B(1998)A genetic algorithm modeling framework and solution technique for short term optimal hydrothermal scheduling IEEE Trans PWRS 13 501-518
  • [10] Huang M(2004)A genetic algorithm solution approach to the hydrothermal coordination problem IEEE Trans Power Syst 19 1356-1364