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Hybridizing bat algorithm with artificial bee colony for combined heat and power economic dispatch

机译:杂交蝙蝠算法与人工蜜蜂殖民地,用于综合发电经济调度

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This paper presents a new algorithm based on hybridizing Bat Algorithm (BA) and Artificial Bee Colony (ABC) with Chaotic based Self-Adaptive (CSA) search strategy (CSA-BA-ABC) to solve the large-scale, highly non-linear, non-convex, non-smooth, non-differential, non-continuous, multi-peak and complex Combined Heat and Power Economic Dispatch (CHPED) problems. The proposed hybrid algorithm has better capability to escape from local optima with faster convergence rate than the standard BA and ABC. The proposed algorithm works based on the three mechanisms. The first one is a novel adaptive search mechanism, in which one of the three search phases (BA phase, directed onlooker bee phase and modified scout bee phase) is selected based on the aging level of the individual's best solution (pbest). In this regard, ABC's phases can assist BA phase to search based on deeper exploration /exploitation pattern as an alternative. In periodic intervals, the second mechanism called as CSA updates algorithm control parameters using chaotic system based on prevailing search efficiency in the swarm. Lastly, the third mechanism is enhancing the algorithm performance by incorporating individual's directional information, habitat selection and self-adaptive compensation. The effectiveness and robustness of the proposed algorithm are tested on a set of 23 benchmark functions and three CHPED problems. The obtained results by the suggested algorithm in terms of quality solution, computational performance and convergence characteristic are compared with various algorithms to show the ability of the proposed approach and its robustness in finding a better cost- effective solution. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文介绍了一种基于杂交蝙蝠算法(BA)和人造蜂菌落(ABC)的新算法,具有混沌的自适应(CSA)搜索策略(CSA-BA-ABC)来解决大规模,高度非线性的,非凸,非平滑,非差异,非连续,多峰和复杂的复杂的热量和权力经济调度(CHPED)问题。所提出的混合算法具有比标准BA和ABC更快的收敛速度从本地最佳逃逸的能力更好。所提出的算法基于三种机制工作。第一个是一种新颖的自适应搜索机制,其中三个搜索阶段(BA相,指导旁路蜂相位和修改的SCOUT BEE相中中的一个是一种新的自适应搜索机制,基于个人最佳解决方案的老化水平(PBEST)的老化水平来选择。在这方面,ABC的阶段可以帮助BA阶段根据更深的探索/剥削模式作为替代方案来搜索。在周期性间隔中,使用基于Swarm中的普遍搜索效率的混沌系统称为CSA更新算法控制参数的第二机制。最后,第三种机制通过结合个人的方向信息,栖息地选择和自适应补偿来增强算法性能。在一组23个基准函数和三个酸问题上测试了所提出的算法的有效性和鲁棒性。通过质量解决方案,计算性能和收敛特性方面所获得的算法得到的结果与各种算法进行比较,以显示所提出的方法及其在寻找更好成本效益的解决方案方面的能力。 (c)2018 Elsevier B.v.保留所有权利。

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