The effective operation of solar-supplied wireless sensor nodes is reached when a constant function with minimum energy consumption occurs. Accordingly, energy consumption management requires prior prediction of solar energy income. The accuracy of prediction contributes largely to maximizing or minimizing the energy consumed in those nodes. The moving average prediction algorithms show considerable errors due to sudden weather fluctuations. Additionally, the neural networks are applied only with historical inputs till now, accompanied by insufficient precision. Thus, they all prevent working effectively. This paper develops a predictive neural network with higher accuracy than the moving average algorithms and the neural networks of historical inputs. The developed neural network uses the zenith angle as additional geometrical input to the existing historical ones. The results showed a Mean Bias Error (MBE) of (0.52%) for the developed neural network. while (EWMA, WCMA, Pro-Energy, NN of 2 historical inputs, NN of 5 historical inputs, and NN of 19 historical inputs) appeared at (11.92%, 8.59%, 6.34%, 4.33%, 2.56%, and 1.08%), respectively. For a simulation period of one week, the developed neural network eliminated three hours of operation within the high consumption state (S3) in favor of the lower consumption state (S2) which maintains the constant function.