提高农村微电网集群农业生产力的灌溉负荷优化

R. Karunakaran, R. Ravikumar, K. Lakshmanan, M. Suresh, Vineeth Vijayaraghavan
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引用次数: 0

摘要

本文提出了一种强大的架构,用于将已有的印度农村独立微电网聚集在一起,以提高系统的灌溉效率,从而提高农业生产力并降低总体成本。智能能源调度电网(IEDG)由集群电网系统(CGS)和集中存储代理(CSA)组成,集群电网系统中单个微电网在一个参与式框架中相互集成,以实现有效的能源调度;集中存储代理(CSA)与现有的孤岛系统相结合,以有效地存储和利用多余的能源。在灌溉负荷偏好(ILP)模型下,采用农业负荷优先服务来提高灌溉负荷效率。拟议的框架是在一个由三个合并的微电网组成的集群中实施的,其中泵送的水量增加了22.61%,导致灌溉负荷服务增加了9.1%,同时保持了系统的生活效率和寿命成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Irrigation Load Optimization for Enhanced Agricultural Productivity in Rural Microgrid Clusters
This paper proposes a robust architecture for clustering pre-existing rural Indian standalone microgrids in close proximity to enhance the irrigation efficiency of the system leading to improved agricultural productivity along with alleviated overall costs. The Intelligent Energy Dispatching Grid (IEDG) comprises of Clustered Grid System (CGS) where the individual microgrids are integrated with each other in a participatory framework for effective energy dispatching and Centralized Storage Agent (CSA) which is annexed with the existing islanded system for effective storage and utilization of excess energy. Preferential servicing for agricultural loads is adopted to elevate the irrigation load efficiency under the Irrigation Load Preference (ILP) model. The proposed framework is implemented for a cluster of three incorporated microgrids where an increase of 22.61% is observed in the amount of water pumped resulting in a 9.1% increase in irrigation load servicing while preserving the domestic efficiency and lifetime cost of the system.
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