Control of system's temperature is one of the active research areas in field of energy consumption. In this research we have following objectives: temperature data collection from system, intelligent system identification based on neuro-fuzzy Auto Regressive eXternal model input (ARX) methodology and design a nonlinear controller to fixed a temperature and improve the energy efficiency. To control the system's temperature, data collection and data analysis are two most important factors. After data collection, system identification plays an important role to control systems. Neuro-fuzzy ARX is one of the significant method to system modeling. In this research, the number of training data is less than 100 samples. To control of system's temperature, Pulse Width Modulator (PWM) is used by the nonlinear model free controller to fixed system's temperature. However tuning the system's temperature is extremely important but the other important factors is the rate of tuning the temperature. Nonlinear model free robust functional based is used in this research.