碳密集型食品零售行业碳路线图投资策略的制定

A.N. Ayoub, A. Gaigneux, N. Le Brun, S. Acha, R. Lambert, N. Shah
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引用次数: 4

摘要

这项工作提出了一种方法,通过使用统计分析和优化建模,为英国碳密集型产业开发创新的脱碳投资战略框架。案例研究的重点是选取具有代表性的零售建筑样本,并评估在一系列建筑中安装低碳热电联产装置(CHPs)和光伏太阳能电池板(pv)的财务可行性。首先对每个建筑物进行模拟,并通过多元自适应回归样条(MARS)生成一组回归系数,将其输入到混合整数线性规划(MILP)问题中。在考虑电价、天然气价格和政策激励等市场趋势的情况下,解决MILP可以为案例研究提供到2050年的最佳脱碳投资策略。结果表明了每年所需的投资水平、相关的运营和碳节约以及此类投资的计划。这种方法在几个场景中得到重申,其中不同的参数,如公用事业价格、资本成本和电网碳因子预测到2050年(根据国家电网的未来能源情景)。这项工作显示了一个清晰的数学框架如何能够帮助商业组织的决策者以经济有效的方式减少他们的碳足迹,从而达到基于科学的目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The development of a carbon roadmap investment strategy for carbon intensive food retail industries

This work presents an approach to develop an innovative decarbonisation investment strategy framework for carbon intensive UK industries by using statistical analysis and optimisation modelling. The case study focuses on taking a representative sample of retail buildings and assesses the financial viability of installing low-carbon Combined Heat and Power units (CHPs) and Photovoltaic Solar Panels (PVs) across a portfolio of buildings. Simulation of each building are initially conducted, and the results generate a set of regression coefficients, via a multivariate adaptive regression splines (MARS), which are inputted into a Mixed Integer Linear Programming (MILP) problem. Solving the MILP yields the optimal decarbonisation investment strategy for the case study up to 2050, considering market trends such as electricity prices, gas prices and policy incentives. Results indicate the level of investment required per year, the operational and carbon savings associated, and a program for such investments. This method is reiterated for several scenarios where different parameters such as utility prices, capital costs and grid carbon factors are forecasted up to 2050 (following the Future Energy Scenarios from National Grid). This work shows how a clear mathematical framework can assist decision-makers in commercial organisations to reduce their carbon footprint cost-effectively and thus reach science-based targets.

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