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Oppositional Real Coded Chemical Reaction Optimization for different economic dispatch problems

机译:不同经济调度问题的对立实编码化学反应优化

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This paper proposes an effective oppositional Real Coded Chemical Reaction algorithm (ORCCRO) to solve Economic Load Dispatch (ELD) problems involving different equality and inequality constraints. Effects of valve-point loading, multi-fuel options of large-scale thermal plants are also studied. System transmission loss has also been considered in few cases. Chemical Reaction Optimization (CRO) imitates the interaction of molecules in a chemical reaction to reach from a higher energy unstable state to a low energy stable state. A real coded version of it, known as Real-coded chemical reaction optimization (RCCRO). Oppositional based RCCRO (ORCCRO) have been used here to improve the effectiveness and quality of solutions in minimum time. The proposed opposition-based RCCRO (ORCCRO) of the present work employs opposition-based learning for population initialization and also for generation wise update operation. In the present work, quasi-opposite numbers have been utilized instead of pseudo random numbers to improve the convergence rate of the RCCRO. Simulation results establish that the proposed approach outperforms several other existing optimization techniques in terms quality of solution obtained and computational efficiency. Results also prove the robustness of the proposed methodology to solve ELD problems.
机译:提出了一种有效的对立实编码化学反应算法(ORCCRO)来解决涉及不同等式和不等式约束的经济负荷分配(ELD)问题。还研究了大型火力发电厂的阀点负荷,多种燃料选择的影响。在少数情况下也考虑了系统传输损耗。化学反应优化(CRO)模拟了化学反应中分子的相互作用,从而从较高的能量不稳定状态变为较低的能量稳定状态。它的真实编码版本,称为真实编码化学反应优化(RCCRO)。基于对立的RCCRO(ORCCRO)在这里用于在最短的时间内提高解决方案的有效性和质量。本工作的拟议的基于对立的RCCRO(ORCCRO)采用基于对立的学习进行种群初始化以及生成更新操作。在目前的工作中,已经使用准相对数代替伪随机数来提高RCCRO的收敛速度。仿真结果表明,在获得的解的质量和计算效率方面,该方法优于其他几种现有的优化技术。结果还证明了所提出方法解决ELD问题的鲁棒性。

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