OPTIMAL EXPANSION PLANNING OF DISTRIBUTION NETWORK WITH DISTRIBUTED GENERATION BY UTILIZING GRID-BASED MULTI-OBJECTIVE HARMONY SEARCH ALGORITHM (CASE STUDY: DEBREMARKOS DISTRIBUTION NETWORK)
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Date
2019-04-25
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Hawassa University
Abstract
Electrical energy plays a vital role in the socio-economic development. To combat for the power
system profile problems, distribution substation needs to be established considering future
expansion due to urbanization. Debre Markos (D/M) distribution network needs expansion
planning to meet the growing load demand. To evaluate the capability of the existing distribution
network and to supply reliable power for future expansion, demand forecast for the years
2017/18-2022/23-2027/28 has been performed by using trend forcasting technigue withl east
sequre approximation and evaluating the load flow by using backward-forward sweep load flow.
According to the results, the existingnetwork cannot meet the existing load demand and it has
major problems of increased voltage deviation and power loss. In this thesis, D/M distribution
network expansion planning considering future demand growth and distributed generation
placement and sizing is carried out using Grid based Multi-Objective Harmony Search Algorithm
(GrMHSA). The total real power loss (Pl), total reactive power loss (Ql) and total voltage
deviation (VD) at the target year for the base case by taking the existing line and the projected
bus data are 7434.9kw, 7391.8kvar and 58.6952p.u for D/M Feeder 3 and 470.7058kw,
404.5524kvar and 6.4412p.u for D/M Feeder 4 respectively. After applying GrMHSA
optimization technique for DG sizing and placement, the total Pl, total Ql and VD at the target
year are 95.398kw,124.979kvar and 0.479p.u for D/M Feeder 3 (F3A and F3B) and 30.811kw,
37.727kvar and 0.533p.u for D/M Feeder 4 respectively
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Keywords
Distribution network planning, load forecasting, least-square method, backward forward sweep load flow, power loss, VD, meta-heuristic algorithm, HSA
