占用率
电
马尔可夫链
库存(枪支)
计算机科学
可再生能源
离散事件仿真
能量建模
计量经济学
时间使用调查
能源消耗
模拟
环境科学
工作(物理)
工程类
经济
土木工程
机器学习
电气工程
机械工程
作者
Jianli Chen,R.S. Adhikari,Eric Wilson,Joseph Robertson,Anthony Fontanini,Ben Polly,Opeoluwa Olawale
出处
期刊:Applied Energy
[Elsevier]
日期:2022-09-05
卷期号:325: 119890-119890
被引量:38
标识
DOI:10.1016/j.apenergy.2022.119890
摘要
The residential buildings sector is one of the largest electricity consumers worldwide and contributes disproportionally to peak electricity demand in many regions. Strongly driven by occupant activities, household energy consumption is stochastic and heterogeneous in nature. However, most residential energy models applied by industry use homogeneous, deterministic activity schedules, which work well for predictions of annual energy consumption, but can result in unrealistic hourly or sub-hourly electric load profiles, with exaggerated or muted peaks. The increasing proportion of variable renewable energy generators means that representing the heterogeneity and stochasticity of occupant behavior is now crucial for reliable planning at both bulk-power and distribution-system scales. This work presents a novel and open-source occupancy simulation approach that can simulate a diverse set of individual occupant and household event schedules for all major electricity, fuel, and hot water end uses. To accomplish this, we evaluated three alternative occupant activity simulation approaches before selecting a hybrid combining time-inhomogeneous Markov chains and probability-sampling of event durations and magnitudes. We integrated the stochastic occupancy simulation with an open-source bottom-up physics-simulation building stock model and published a set of 550,000 diverse household end-use activity schedules representing a national housing stock. The simulator was verified against time-use survey data, and simulation results were validated against measured end-use electricity data for accuracy and reliability. While we use data for the United States, our application demonstrates how similar approaches could be applied using the time-use survey data collected in many countries around the world.
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