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Reserve Constrained Dynamic Environmental/Economic Dispatch: A New Multiobjective Self-Adaptive Learning Bat Algorithm

机译:储备受限的动态环境/经济调度:一种新的多目标自适应学习Bat算法

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摘要

This paper proposes a new multiobjective self-adaptive learning bat-inspired algorithm to solve practical reserve constrained dynamic environmental/economic dispatch that considers realistic constraints such as valve-point effects, transmission losses, and ramp rate limits over a short-term time period. Furthermore, to ensure secure real-time power system operations, the system operator must schedule sufficient resources to meet energy demand and operating reserve requirements simultaneously. The proposed problem is a complex nonlinear nonsmooth and nonconvex multiobjective optimization problem whose complexity is increased when considering the above constraints. To this end, this paper utilizes a newly developed meta-heuristic bat inspired algorithm to achieve the set of nondominated (Pareto-optimal) solutions. This algorithm is equipped with a novel self-adaptive learning to increase the population diversity and amend the convergence criteria. The initial population of the proposed framework is generated by a chaos-based strategy. In addition, a tournament crowded selection approach is implemented to choose the population such that the Pareto-optimal front is distributed uniformly, while the extreme points of the tradeoff surface are achieved simultaneously. Numerical results evaluate the performances of the framework for real-size test systems.
机译:本文提出了一种新的多目标自适应蝙蝠启发式算法,用于解决实际储备受限的动态环境/经济调度问题,该算法考虑了短期时间段内的实际约束,例如阀点效应,传输损失和斜率限制。此外,为了确保安全的实时电力系统运行,系统操作员必须安排足够的资源来同时满足能源需求和运行储备需求。提出的问题是一个复杂的非线性非光滑非凸多目标优化问题,考虑到上述约束,复杂度会增加。为此,本文利用新开发的启发式蝙蝠启发式算法来实现一组非支配(帕累托最优)解。该算法配备了一种新颖的自适应学习算法,可以增加种群多样性并修改收敛准则。所提出框架的初始填充是通过基于混沌的策略生成的。另外,采用锦标赛拥挤选择方法来选择总体,以使帕累托最优前沿均匀分布,同时同时权衡曲面的极限点。数值结果评估了实际测试系统框架的性能。

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