Fog2Fog: Augmenting Scalability in Fog Computing for Health GIS Systems

This study considers the situation where computational loads are transferred to edge devices and single edge device is not enough. The co-operative sensing, analysis and transmission between several edge nodes helps in enhancing scalability in Fog computing frameworks. The present study uses the positive case of malaria vector borne disease affected information from 2001-2014 of Maharashtra state, India for performance analysis.

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