Smart energy networks provide for an effective means to accommodate high penetrations of variable renewable energy sources like solar and wind, which are key for deep decarbonisation of energy production. However, given the variability of the renewables as well as the energy demand, it is imperative to develop effective control and energy storage schemes to manage the variable energy generation and achieve desired system economics and environmental goals. In this paper, we introduce a hybrid energy storage system composed of battery and hydrogen energy storage to handle the uncertainties related to electricity prices, renewable energy production and consumption. We aim to improve renewable energy utilisation and minimise energy costs and carbon emissions while ensuring energy reliability and stability within the network. To achieve this, we propose a multi-agent deep deterministic policy gradient approach, which is a deep reinforcement learning-based control strategy to optimise the scheduling of the hybrid energy storage system and energy demand in real-time. The proposed approach is model-free and does not require explicit knowledge and rigorous mathematical models of the smart energy network environment. Simulation results based on real-world data show that: (i) integration and optimised operation of the hybrid energy storage system and energy demand reduces carbon emissions by 78.69%, improves cost savings by 23.5% and renewable energy utilisation by over 13.2% compared to other baseline models and (ii) the proposed algorithm outperforms the state-of-the-art self-learning algorithms like deep-Q network.
翻译:智能能源网络提供了一种有效的手段,以容纳太阳能和风风等可变可再生能源的高渗透性,这是能源生产深度去碳化的关键。然而,鉴于可再生能源以及能源需求的变化多变,我们必须制定有效的控制和能源储存计划,以管理可变能源的产生,实现理想的系统经济和环境目标。在本文件中,我们采用了由电池和氢能源储存组成的混合能源储存系统,以处理与电价、可再生能源生产和消费有关的不确定性。我们的目标是改进可再生能源的利用,最大限度地减少能源成本和碳排放,同时确保网络内的能源可靠性和稳定性。为此,我们提议采用多试剂的深度确定性政策梯度办法,这是一种深入强化的基于学习的控制战略,以优化混合能源储存系统和能源需求的时间安排,实现预期的系统经济和环境目标。在本文件中,我们采用由电池和氢能源储存组成的混合能源储存系统,处理与智能能源网络环境的不确定性,不需要明确的知识和严格的数学模型。我们基于现实世界数据的模拟结果显示:(i)混合能源储存系统的整合和优化运行,同时确保网络的能源可靠性和能源需求的可靠性和稳定性。为了降低碳排放,将成本成本增长率提高到23 %,将可再生能源的网络的升级到23 %,将降低碳排放率比23 %。