Abstract
Now a day’s demand side management is essential requirement as the sources are limited but load demand increases day by day. Two types of demand management are most popular now days, home energy management and industrial energy management. In Home energy management it is suggested to shift the load of home appliances from peak hour to off peak hour. However industrial load cannot be shifted from peak load day hours to off peak hours like in evening or night. Industrial load should be managed in day time only. In this paper an approach to manage industrial peak hour demand is presented by using solar power plant (SPP). This paper also proposes a novel method to identify the optimal location of SPP by analyzing voltage stability index. The index is calculated under maximum loading condition by using continuous power flow program (CPF). The paper explains the need of demand side management by comparing the saving of energy and cost at different penetration level of SPP. The proposed method is implemented in an IEEE 39 bus system in MATLAB environment.
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Nidhi, Pal, K. (2022). Optimal Thermal Coordination Dispatch for Demand Side Management. In: Singh, P.K., Singh, Y., Chhabra, J.K., Illés, Z., Verma, C. (eds) Recent Innovations in Computing. Lecture Notes in Electrical Engineering, vol 855. Springer, Singapore. https://doi.org/10.1007/978-981-16-8892-8_25
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DOI: https://doi.org/10.1007/978-981-16-8892-8_25
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