TY - JOUR
T1 - Re-scheduling of unit commitment based on customers' fuzzy requirements for power reliability
AU - Wang, Bo
AU - Li, You
AU - Watada, Junzo
PY - 2011/7
Y1 - 2011/7
N2 - The development of the electricity market enables us to provide electricity of varied quality and price in order to fulfill power consumers' needs. Such customers choices should influence the process of adjusting power generation and spinning reserve, and, as a result, change the structure of a unit commitment optimization problem (UCP). To build a unit commitment model that considers customer choices, we employ fuzzy variables in this study to better characterize customer requirements and forecasted future power loads. To measure system reliability and determine the schedule of real power generation and spinning reserve, fuzzy Value-at-Risk (VaR) is utilized in building the model, which evaluates the peak values of power demands under given confidence levels. Based on the information obtained using fuzzy VaR, we proposed a heuristic algorithm called local convergence-averse binary particle swarm optimization (LCA-PSO) to solve the UCP. The proposed model and algorithm are used to analyze several test systems. Comparisons between the proposed algorithm and the conventional approaches show that the LCA-PSO performs better in finding the optimal solutions.
AB - The development of the electricity market enables us to provide electricity of varied quality and price in order to fulfill power consumers' needs. Such customers choices should influence the process of adjusting power generation and spinning reserve, and, as a result, change the structure of a unit commitment optimization problem (UCP). To build a unit commitment model that considers customer choices, we employ fuzzy variables in this study to better characterize customer requirements and forecasted future power loads. To measure system reliability and determine the schedule of real power generation and spinning reserve, fuzzy Value-at-Risk (VaR) is utilized in building the model, which evaluates the peak values of power demands under given confidence levels. Based on the information obtained using fuzzy VaR, we proposed a heuristic algorithm called local convergence-averse binary particle swarm optimization (LCA-PSO) to solve the UCP. The proposed model and algorithm are used to analyze several test systems. Comparisons between the proposed algorithm and the conventional approaches show that the LCA-PSO performs better in finding the optimal solutions.
KW - Customer requirements
KW - Fuzzy set theory
KW - Fuzzy value-at-risk
KW - Particle swarm optimization algorithm
KW - Power supply reliability
KW - Test systems
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U2 - 10.1587/transinf.E94.D.1378
DO - 10.1587/transinf.E94.D.1378
M3 - Article
AN - SCOPUS:79959965107
SN - 0916-8532
VL - E94-D
SP - 1378
EP - 1385
JO - IEICE Transactions on Information and Systems
JF - IEICE Transactions on Information and Systems
IS - 7
ER -