Recommended Air Conditioner Temperature Based on Probabilistic Power Flow Considering High-Dimensional Stochastic Variables

Current power management systems face multiple reliability challenges associated with integrating a population of air conditioner (AiCo) loads into future grids. These challenges, such as the AiCo overload issue, result in a substantial discrepancy between supply and demand during the summer peak, a...

Full description

Bibliographic Details
Main Author: Xueqian Fu
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8839792/
id doaj-f205d7e69bfa485e8d290b3359d1059f
record_format Article
spelling doaj-f205d7e69bfa485e8d290b3359d1059f2021-04-05T17:16:51ZengIEEEIEEE Access2169-35362019-01-01713395113396110.1109/ACCESS.2019.29418388839792Recommended Air Conditioner Temperature Based on Probabilistic Power Flow Considering High-Dimensional Stochastic VariablesXueqian Fu0https://orcid.org/0000-0001-7983-8700College of Information and Electrical Engineering, China Agricultural University, Beijing, ChinaCurrent power management systems face multiple reliability challenges associated with integrating a population of air conditioner (AiCo) loads into future grids. These challenges, such as the AiCo overload issue, result in a substantial discrepancy between supply and demand during the summer peak, and a few power consumers have to bear the pain of switch power brownouts. The main theme of this paper is the engineering application of AiCo control laws considering the flexible tradeoff between power economics and thermal comfort. The recommended AiCo operating temperature should be reproduced according to different micrometeorological environments. The novelty of the study is that the air conditioner temperature is recommended based on probabilistic power flow (PPF) considering high-dimensional stochastic variables. A fast calculation method is presented to solve PPF calculation problems based on singular value decomposition, principal component analysis and a polling method. This experiment aims to obtain different PPF results corresponding to different AiCo operating temperatures. The effectiveness and efficiency of the proposed method are verified by comparing the method with the Latin hypercube sampling algorithm in a 118-bus power system. Numerical tests verify the benefits of nonnegative matrix factorization and the stochastic response surface method (SRSM) for PPF calculations considering high-dimensional stochastic variables.https://ieeexplore.ieee.org/document/8839792/Photovoltaiccooling load of air conditioningprobabilistic power flowdimensionality reductionstochastic response surface method
collection DOAJ
language English
format Article
sources DOAJ
author Xueqian Fu
spellingShingle Xueqian Fu
Recommended Air Conditioner Temperature Based on Probabilistic Power Flow Considering High-Dimensional Stochastic Variables
IEEE Access
Photovoltaic
cooling load of air conditioning
probabilistic power flow
dimensionality reduction
stochastic response surface method
author_facet Xueqian Fu
author_sort Xueqian Fu
title Recommended Air Conditioner Temperature Based on Probabilistic Power Flow Considering High-Dimensional Stochastic Variables
title_short Recommended Air Conditioner Temperature Based on Probabilistic Power Flow Considering High-Dimensional Stochastic Variables
title_full Recommended Air Conditioner Temperature Based on Probabilistic Power Flow Considering High-Dimensional Stochastic Variables
title_fullStr Recommended Air Conditioner Temperature Based on Probabilistic Power Flow Considering High-Dimensional Stochastic Variables
title_full_unstemmed Recommended Air Conditioner Temperature Based on Probabilistic Power Flow Considering High-Dimensional Stochastic Variables
title_sort recommended air conditioner temperature based on probabilistic power flow considering high-dimensional stochastic variables
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Current power management systems face multiple reliability challenges associated with integrating a population of air conditioner (AiCo) loads into future grids. These challenges, such as the AiCo overload issue, result in a substantial discrepancy between supply and demand during the summer peak, and a few power consumers have to bear the pain of switch power brownouts. The main theme of this paper is the engineering application of AiCo control laws considering the flexible tradeoff between power economics and thermal comfort. The recommended AiCo operating temperature should be reproduced according to different micrometeorological environments. The novelty of the study is that the air conditioner temperature is recommended based on probabilistic power flow (PPF) considering high-dimensional stochastic variables. A fast calculation method is presented to solve PPF calculation problems based on singular value decomposition, principal component analysis and a polling method. This experiment aims to obtain different PPF results corresponding to different AiCo operating temperatures. The effectiveness and efficiency of the proposed method are verified by comparing the method with the Latin hypercube sampling algorithm in a 118-bus power system. Numerical tests verify the benefits of nonnegative matrix factorization and the stochastic response surface method (SRSM) for PPF calculations considering high-dimensional stochastic variables.
topic Photovoltaic
cooling load of air conditioning
probabilistic power flow
dimensionality reduction
stochastic response surface method
url https://ieeexplore.ieee.org/document/8839792/
work_keys_str_mv AT xueqianfu recommendedairconditionertemperaturebasedonprobabilisticpowerflowconsideringhighdimensionalstochasticvariables
_version_ 1721539974024658944