Affiliation:
1. School of Design , Anhui Polytechnic University , Wuhu , Anhui , , China .
Abstract
Abstract
In our daily life, the quickness of water dispensers provides great convenience for our life. By examining the PID control system and fuzzy control system, a fuzzy PID controller has been designed. This system can be used for both automatic and manual parameterization. The problem that the stable operation of the temperature controller cannot be guaranteed in the PID controller has been solved. In this paper, the designed extreme heating and temperature regulation system is installed in the controller of the wireless portable water dispenser to analyze the effects of using this new product. Comparative experiments indicate that the wireless portable water dispenser with a heating and regulating system has an average hot water production capacity of 3.68L/H, which is higher than the standard value of 3.0L/H. The high-speed heating and regulating system in the wireless portable water dispenser shows that it has a better heating capacity than the ordinary wireless portable water dispenser. Based on the regression analysis of this new product on the basis of user satisfaction, the overall innovativeness of the product = 0.62*usability + 0.032*emotion + 0.056*functionality. The “Usability” construct has the best predictive power with 62% explanation. It indicates that the demand for the product is high among users.
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