2019
DOI: 10.1016/j.apenergy.2018.12.048
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Optimal energy management for commercial buildings considering comprehensive comfort levels in a retail electricity market

Abstract: Demand response has been implemented by distribution system operators to reduce peak demand and mitigate contingency issues on distribution lines and substations. Specifically, the campus-based commercial buildings make the major contributions to peak demand in a distribution system. Note that prior works neglect the consumers' comfort level in performing demand response, which limits their applications as the incentives are not worth as compared to the loss in comfort levels for most time. Thus, a framework t… Show more

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Cited by 36 publications
(18 citation statements)
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References 26 publications
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“…where (p, h, w, d) is the set of adaptive second-stage decisions based on first-stage decisions p and uncertainty sets z and O. y is the second-stage decisions, including p, h, w, d. Equation (33) represents the constraints related to only firststage variables (1), (28), (30) and (31), where equation (34) collects constraints (4)- (12) and (15)- (23). Equation (35) accounts for constraints (13) and (26), which involve uncertain RES power generation.…”
Section: Solution Methodologymentioning
confidence: 99%
See 1 more Smart Citation
“…where (p, h, w, d) is the set of adaptive second-stage decisions based on first-stage decisions p and uncertainty sets z and O. y is the second-stage decisions, including p, h, w, d. Equation (33) represents the constraints related to only firststage variables (1), (28), (30) and (31), where equation (34) collects constraints (4)- (12) and (15)- (23). Equation (35) accounts for constraints (13) and (26), which involve uncertain RES power generation.…”
Section: Solution Methodologymentioning
confidence: 99%
“…The historical wind power generation data is from [32]. PEVs and hot water tanks are dispatched to the influential buses as forecasted that may be affected by the extreme event, where those parameters are as from [33]. The parameters of critical power loads are from [34], where non-critical power loads are 10% of the critical power loads.…”
Section: A Networked Microgridsmentioning
confidence: 99%
“…Through the use of intelligent control techniques, BEMS can be optimized to maximize energy efficiency and integrate RESs while reducing the cost of energy and maintaining the required user satisfaction levels [24], [25]. The advanced control methods not only achieve the desired comfort level but also reduce the operational and maintenance cost, thus improving the energy performance of the building [26], [27].…”
Section: Comfort Index Optimizationmentioning
confidence: 99%
“…Based on objectives, prior works can be categorized into three different types, namely, (i) minimizing operation and maintenance (O&M) costs of the entire system [1], (ii) maximizing consumers' comfort levels (only focus on the HVAC system) [2], and (iii) minimizing load curtailment costs [3]. Very few of them focus on joint objectives of both minimizing O&M costs and maximizing consumers' comfort levels [4]. This More importantly, commercial buildings (CBs) consume more than 40% of total energy supply to power systems [5].…”
Section: Introductionmentioning
confidence: 99%