蒙特卡洛模拟与确定性模型分析隔热成本的比较研究

Marco Antonio Montúfar Benítez, Jaime Mora Vargas, José Raúl Castro Esparza, Héctor Rivera Gómez, Oscar Montaño Arango
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摘要

本文的主要目的是在 @RISKTM 中实施一个仿真模型,并研究在传统的确定性模型中加入随机变量(如度日)对计算墙体保温层最佳厚度的影响。目前,由于全世界对减少环境污染的兴趣日益浓厚,绿色建筑已变得非常重要。其中一种节能方法就是使用隔热材料。传统上,这些隔热材料的最佳厚度是通过确定性模型计算得出的。利用巴勒斯坦某一地区冬季所需的度日数的真实数据生成的信息,对该镇每年所需的度日数进行了 10 年、20 年、50 年和 70 年的随机抽样。结果表明,在不考虑通货膨胀率的情况下,超过采用确定性分析法计算的成本净现值的概率从 0% 到 100% 不等。结果还显示,对于设计寿命超过 40 年的建筑,如果建筑寿命超过设计寿命,超支风险就会降低。此外,这种风险会转移到谁来支付建筑物供暖的运营成本上。这项研究有两方面的贡献:(a) 通过引入特定地区所需的度日变化,将随机方法纳入确定建筑物最佳隔热厚度的传统模型;(b) 将建筑物供暖所产生的经济风险度量确定为建筑物设计使用年限和实际使用年限的函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Study of Monte Carlo Simulation and the Deterministic Model to Analyze Thermal Insulation Costs
The main purpose of this paper is to implement a simulation model in @RISKTM and study the impact of incorporating random variables, such as the degree days in a traditional deterministic model, for calculating the optimum thickness of thermal insulation in walls. Currently, green buildings have become important because of the increasing worldwide interest in the reduction of environmental pollution. One method of saving energy is to use thermal insulation. The optimum thickness of these insulators has traditionally been calculated using deterministic models. With the information generated from real data using the degree days required in a certain zone in Palestine during winter, random samples of the degree days required annually in this town were generated for periods of 10, 20, 50, and 70 years. The results showed that the probability of exceeding the net present value of the cost calculated using deterministic analysis ranges from 0% to 100%, without regard to the inflation rate. The results also show that, for design lifetimes greater than 40 years, the risk of overspending is lower if the building lasts longer than the period for which it was designed. Moreover, this risk is transferred to whomever will pay the operating costs of heating the building. The contribution of this research is twofold: (a) a stochastic approach is incorporated into the traditional models that determine the optimum thickness of thermal insulation used in buildings, by introducing the variability of the degree days required in a given region; (b) a measure of the economic risk incurred by building heating is established as a function of the years of use for which the building is designed and the number of years it is actually used.
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