Three network layers have been applied for matlab classification objective. The first layer is matlab enter layer which has five inputs corresponding to matlab variety of capabilities; matlab second layer is one hidden layer that contains 10 nodes, and eventually, there’s one output layer that presentations matlab final binary result ordinary or high eye strain. Figure 12 displays engineering visual representation engineering matlab a whole lot of layers used. When matlab input values are moved from one layer to an alternate, they get elevated by weights and this process is repeated all matlab way to matlab output layer. The hidden layer values can be higher than 1, lower than zero, or in between. Therefore, in our analysis, we used matlab sigmoid as an activation function to regulate and scale all matlab results to be among 0 and 1 for matlab output of each node. X. Liao, J. B. Thrasher, J. Pelling, J. Holzbeierlein, Q. C. da Silva S. L. Di Felippo A. and Kamikawachi D. S.