论文标题

英国的长期增量成本(LRIC)分销网络定价,为中国的分销网络提供建议

Long Run Incremental Cost (LRIC) Distribution Network Pricing in UK, advising China's Distribution Network

论文作者

Mujeeb, Asad, Peng, Wang

论文摘要

电力分配网络系统被认为是现代电力系统的关键组成部分之一。由于能源需求的增加,近年来,可再生能源资源渗透到电力系统中已广泛增加。越来越多的分布式世代(DGS)正在加入分销网络,以在电源系统中创造平衡并满足消费者的供求。如今,大量的DG纳入分销网络系统已完全现代化的电力系统,从而使电力市场分散。因此,英国政府正在加压14个分销网络运营商(DNOS),以将更多的DGS包括在其分销网络系统中。由于许多因素,将DGS纳入网络系统可能会有所帮助,但从长远来看,它对分销网络系统构成了许多挑战。网络安全被认为是影响消费者中网络定价准确计算和分布的效率的挑战之一。为了解决上述问题,这项研究根据长期增量成本(LRIC)定价分析了网络安全性,以平衡和降低英国DNO的网络定价。但是,这项研究提出了一种深入增强学习(DRL)的方法,该方法也称为深钢筋学习算法(DQN),以优化网络中的反应性功率值,以平衡和降低网络定价,同时保持网络安全性。该方法将IEEE14总线视为其数学模型,并实际上使用DQN算法伪代码在MATLAB中模拟了该方法。在淋巴结注入网络之前和之后,已对网络安全性进行了分析。

Electricity distribution network system is considered one of the key component of the modern electrical power system. Due to increase in the energy demand, penetration of renewable energy resources into the power system has been extensively increasing in recent years. More and more distributed generations (DGs) are joining the distribution network to create balance in the power system and meet the supply and demand of consumers. Today, large amount of DGs inclusion in the distribution network system has completely modernized power system resulting in a decentralize electricity market. Hence, Government of UK is pressurizing 14 distribution network operators (DNOs) to include more DGs into their distribution network system. DGs inclusion in the network system might be helpful due to many factors, but it creates many challenges for distribution network system in the long term. The network security is realized to be one of the challenge that impact the efficiency of accurate calculation and distribution of network pricing among consumers. To address the aforementioned issue, this research analysed the network security on the basis of Long run incremental cost (LRIC) pricing to balance and reduce the network pricing for the DNOs in UK. However, this study presented an approach of Deep reinforcement learning (DRL) also called deep reinforcement learning algorithm (DQN) to optimize the reactive power values in the network to balance and reduce the network pricing while keeping the network security. The method considers IEEE14 bus as its mathematical model and practically simulates the method in MATLAB using DQN algorithm pseudo codes. The network security has been analysed with and without security factor before and after the nodal injection into the network.

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