The Risk Analysis of Deforestation Activities based on the Artificial Intelligence based Light Weight Deep Learning Model

Deforestation can affect crop yields due to excessive rainfall or drought. The growing season of crops is extended in cold regions. Pest and disease attacks are likely to increase. Due to high heat, the decomposition of organic matter in the soil is accelerated and its quantity is likely to decrease. As carbon dioxide increases, productivity increases and crops take up more nutrients from the soil. This can reduce soil fertility. As the Earth warms, mosquito lifespans and reproductive rates increase. This causes malaria to spread. Produce and food spoilage due to favorable conditions for bacteria and fungi to grow. Depletion of the ozone layer in the atmosphere increases the incidence of skin cancers. Sea levels rise due to melting ice sheets due to high temperatures. If this continues there is a risk of drowning Maldives and Bangladesh. Groundwater becomes saline due to intrusion of saline water in coastal areas. Use of petroleum fuels should be reduced. Effective use of natural energy can reduce carbon emissions. Deforestation should be stopped completely.

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