国内能源管理系统非线性问题优化的实证方法

IF 1.4 Q4 GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY Environmental and Climate Technologies Pub Date : 2023-01-01 DOI:10.7250/conect.2023.034
F. Carreras, Harald Kirchsteiger
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引用次数: 0

摘要

摘要采用数值优化方法,结合时变电价,降低由光伏发电和电池储能组成的家庭住宅的运行成本和排放。系统的建模包括涉及的不同设备、能量流及其约束,以及参数化优化对象的目标函数。优化问题的解定义了电池在未来(预测界)最适当的充放电策略。功率逆变器效率通常通过假设它们具有恒定值来建模,因此,充电和放电能量流位于逆变器最可能的操作区域。更真实的逆变器效率建模应该考虑效率曲线的非线性参数化。这种考虑将优化问题转化为非线性问题。本文改进了求解非线性优化问题的方法,即线性优化问题的迭代。第一次迭代以优化问题的解作为种子值,该优化问题考虑电池制造商提供的电池逆变器的恒定效率。根据优化问题的解的值,借助于实测的(不充电)功率曲线和优化后的(不充电)功率曲线,确定电池逆变器效率的新值,并利用这些值重新计算优化问题。如果实现了一定数量的迭代,或者效率值趋于一致,则流程停止。
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An Empirical Approach to Optimize Nonlinear Problems of Domestic Energy Management Systems
Abstract Numerical optimization methods are used to reduce the operative costs and emissions of domestic houses comprising photovoltaic energy production and battery electrical storage combined with time-variant electricity prices. The modelling of the system comprises the different involved devices, energy flows and their constraints, and an objective function, which parametrizes the object of the optimization. The solution of the optimization problem defines the most adequate charging and discharging strategy of the battery into the future (prediction horizon). Power inverter efficiencies are usually modelled by assuming that they have constant values, and hence, that charging and discharging energy-flows lie on the most probably operating region of the inverter. A more realistic modelling of the power inverter efficiencies should consider a nonlinear parametrization of the efficiency curves. This consideration converts the optimization problem into a nonlinear one. It this paper, we modify a method to solve nonlinear optimization problems means iterations of linear optimization problems. The first iteration uses as seed values the solution of an optimization problem, which considers constant efficiencies of the battery inverter provided by the manufacturer of the battery. With the values of the solution of the optimization problem and with help of measured (dis)charging power curves and the optimized (dis)charging, new values of the efficiencies of the inverter of the battery will be determined, and the optimization problem will be with these values again computed. If a certain number of iterations is achieved or the values of the efficiencies converge, then the process stops.
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来源期刊
Environmental and Climate Technologies
Environmental and Climate Technologies GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
3.10
自引率
28.60%
发文量
0
审稿时长
16 weeks
期刊介绍: Environmental and Climate Technologies provides a forum for information on innovation, research and development in the areas of environmental science, energy resources and processes, innovative technologies and energy efficiency. Authors are encouraged to submit manuscripts which cover the range from bioeconomy, sustainable technology development, life cycle analysis, eco-design, climate change mitigation, innovative solutions for pollution reduction to resilience, the energy efficiency of buildings, secure and sustainable energy supplies. The Journal ensures international publicity for original research and innovative work. A variety of themes are covered through a multi-disciplinary approach, one which integrates all aspects of environmental science: -Sustainability of technology development- Bioeconomy- Cleaner production, end of pipe production- Zero emission technologies- Eco-design- Life cycle analysis- Eco-efficiency- Environmental impact assessment- Environmental management systems- Resilience- Energy and carbon markets- Greenhouse gas emission reduction and climate technologies- Methodologies for the evaluation of sustainability- Renewable energy resources- Solar, wind, geothermal, hydro energy, biomass sources: algae, wood, straw, biogas, energetic plants and organic waste- Waste management- Quality of outdoor and indoor environment- Environmental monitoring and evaluation- Heat and power generation, including district heating and/or cooling- Energy efficiency.
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