Techno-Economic and Environmental Based Approach for Planning of SDG and DSTATCOM with Impact of Network Reconfiguration using APSO and TLBO

Bikash Kumar Saw, Aashish Kumar Bohre, Jalpa Thakkar, M. Kolhe
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Abstract

A Multi Objective based Fitness Function (MOFF) is proposed for the optimum planning of multiple Solar Distributed Generation (SDG) and DSTATCOM with radial distribution network (RDN) reconfiguration impact for techno-economic and environmental benefit improvement. The Adaptive-Particle Swarm Optimization (APSO) and Teaching-Learning Based Optimization techniques (TLBO) are employed to accomplish this work. In the proposed MOFF, the Active Power Loss (APLoss), Reactive Power Loss (RPLoss), System Voltage Deviation (SVD), Fault-Current Level-of-Line (FCLLine), and System Service Reliability (SSR) are considered. The economic-benefit measures along with Environmental Emissions Components (EEC) impact have also been considered in light of various system costs such as Fixed Capital Recovery Cost (FCRCost), Energy Loss Cost (ELCost) and Energy Not Supplied Cost (ENSCost). The novelty in the MOFF is the simultaneous consideration of FCLLine with APLoss, RPLoss, SVD, and SSR along with EEC impact calculation. The IEEE 69 and 118 bus RDN is considered with three case studies to demonstrate the proposed methodology's usefulness. The result analysis reveals that better performances can be obtained based on the considered MOFF in terms of environment-friendly techno-economic perspective, consistency, convergence, and computation time using TLBO rather than APSO.  
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基于APSO和TLBO的SDG和DSTATCOM网络重构影响的技术经济和环境规划方法
针对径向配电网重构影响下的多个太阳能分布式发电(SDG)和DSTATCOM的优化规划,提出了基于多目标适应度函数(MOFF)的优化规划方法,以提高技术经济效益和环境效益。采用自适应粒子群优化(APSO)和基于教学的优化技术(TLBO)来完成这项工作。该模型考虑了有功功率损耗(APLoss)、无功功率损耗(RPLoss)、系统电压偏差(SVD)、线路故障电流电平(FCLLine)和系统服务可靠性(SSR)。根据各种系统成本,如固定资本回收成本(FCRCost)、能源损失成本(ELCost)和未提供能源成本(ENSCost),也考虑了经济效益措施以及环境排放组件(EEC)影响。MOFF的新颖之处在于同时考虑FCLLine与APLoss、RPLoss、SVD和SSR以及EEC影响计算。IEEE 69和118总线RDN考虑了三个案例研究,以证明所提出的方法的实用性。结果分析表明,在环境友好的技术经济角度、一致性、收敛性和计算时间方面,采用TLBO比采用APSO具有更好的性能。
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