Modeling and Simulation of Electromagnetic Interference in Power Distribution Networks: Implications for Grid Stability

Authors

  • Janaki Rama Phanendra Kumar Ande Architect, Tavant Technologies Inc., 3945 Freedom Cir #600, Santa Clara, CA 95054, USA
  • Aleena Varghese Software Engineer, Teamlease Services Ltd., Koramangala, Bengaluru, Karnataka - 560095, India
  • Suman Reddy Mallipeddi Software Engineer, Sbase Technologies Inc. (NBC Universal), 30 Rockefeller Plaza, New York, NY 10012, USA
  • Dileep Reddy Goda System Engineer, Nitya Software Solutions, Inc. (Cisco), 170 West Tasman Drive, San Jose, California, USA
  • Sridhar Reddy Yerram Software Developer, Propelsys Technologies, 4975 Preston Park Blvd, Plano, TX 75093, USA

DOI:

https://doi.org/10.18034/apjee.v4i2.720

Keywords:

Electromagnetic Interference, Power Distribution Networks, Modeling, Simulation, Grid Stability, Electromagnetic Compatibility, Power System Analysis, Transient Response, Frequency Spectrum Analysis, EMI Impact Assessment

Abstract

The subjects of this study are the modeling and simulation of electromagnetic interference (EMI) in power distribution networks and its consequences for grid stability. The key goals are to find the sources of EMI, assess how they affect grid performance, and create mitigation plans. A thorough study of research articles and literature on EMI modeling, simulation methods, and grid stability assessment is part of the methodology. Important discoveries emphasize the various origins and traits of electromagnetic interference (EMI), how it affects voltage control, frequency stability, and power quality, and how to mitigate and improve grid resilience. The policy implications emphasize the significance of standards, research projects, and regulatory frameworks in tackling EMI issues and guaranteeing the dependability of distribution networks. Stakeholders can ensure a consistent and adequate supply of energy to consumers by strengthening the resilience of power distribution networks and including electromagnetic interference (EMI) considerations in design, planning, and operational procedures.

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Published

2017-10-31

How to Cite

Ande, J. R. P. K., Varghese, A., Mallipeddi, S. R., Goda, D. R., & Yerram, S. R. (2017). Modeling and Simulation of Electromagnetic Interference in Power Distribution Networks: Implications for Grid Stability. Asia Pacific Journal of Energy and Environment, 4(2), 71-80. https://doi.org/10.18034/apjee.v4i2.720

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