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A self-learning TLBO based dynamic economic/environmental dispatch considering multiple plug-in electric vehicle loads

机译:考虑多种插电式电动汽车负荷的基于自学习TLBO的动态经济/环境调度

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Economic and environmental load dispatch aims to determine the amount of electricity generated from power plants to meet load demand while minimizing fossil fuel costs and air pollution emissions subject to operational and licensing requirements. These two scheduling problems are commonly formulated with non-smooth cost functions respectively considering various effects and constraints, such as the valve point effect, power balance and ramprate limits. The expected increase in plug-in electric vehicles is likely to see a significant impact on the power system due to high charging power consumption and significant uncertainty in charging times. In this paper, multiple electric vehicle charging profiles are comparatively integrated into a 24-hour load demand in an economic and environment dispatch model. Self-learning teaching-learning based optimization (TLBO) is employed to solve the non-convex non-linear dispatch problems. Numerical results onwell-known benchmark functions, as well as test systems with different scales of generation units show the significance of the new scheduling method.
机译:经济和环境负荷调度旨在确定发电厂产生的电量,以满足负荷需求,同时将化石燃料成本和空气污染排放降至最低,这取决于运营和许可要求。通常用不平滑的成本函数来表述这两个调度问题,分别考虑各种影响和约束,例如阀点影响,功率平衡和斜坡率限制。由于高充电功率消耗和充电时间的不确定性,插电式电动汽车的预期增长可能会对电力系统产生重大影响。在本文中,在经济和环境调度模型中,将多个电动汽车的充电曲线比较地集成到24小时负载需求中。基于自学习的基于学习的优化(TLBO)被用来解决非凸非线性调度问题。众所周知的基准函数以及具有不同规模的发电单元的测试系统的数值结果表明了这种新调度方法的重要性。

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