4.6 Article

Constraint multi-objective optimal design of hybrid renewable energy system considering load characteristics

Journal

COMPLEX & INTELLIGENT SYSTEMS
Volume 8, Issue 2, Pages 803-817

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s40747-021-00363-4

Keywords

Constraint optimization; Multi-objective optimization; Hybrid renewable energy system; Evolutionary algorithms

Funding

  1. National Natural Science Foundation of China [61773390, 61627808]
  2. HunanYouth elite program [2018RS3081]
  3. scientific key research project of National University of Defense Technology [ZZKY-ZX-11-04]
  4. [193-A11-101-03-01]

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The study introduces a constraint multi-objective model to address the impact of load characteristics on the design of hybrid renewable energy systems, along with a corresponding algorithm to tackle this issue.
Finding the optimal size of a hybrid renewable energy system is certainly important. The problem is often modelled as an multi-objective optimization problem (MOP) in which objectives such as annualized system cost, loss of power supply probability etc. are minimized. However, the MOP model rarely takes the load characteristics into account. We argue that ignoring load characteristics may be inappropriate when designing HRES for a place with intermittent high load demand. For example, in a training base the load demand is high when there are training tasks while the demand decreases to a low level when there is no training task. This results in an interesting issue, that is, when the loss of power supply probability is determined at a specific value, say 15%, then it is very likely that most of loss of power supply would occur right in the training period which is unexpected. Therefore, this study proposes a constraint multi-objective model to deal with this issue-in addition to the general multi-objective optimization model, the loss of power supply probability over a critical period is set as a constraint. Correspondingly, the non-dominated sorting genetic algorithm II with a relaxed epsilon constraint handling strategy is proposed to address the constraint MOP. Experimental results on a real world application demonstrate that the proposed model and algorithm are both effective and efficient.

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