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Design of the Approximation Function of a Pedometer Based on Artificial Neural Network for the Healthy Life Style Promotion in Diabetic Patients

机译:基于人工神经网络对糖尿病患者健康生活方式促进的测距测定近似函数的设计

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The present study describes the design of an Artificial Neural Network to synthesize the Approximation Function of a Pedometer for the Healthy Life Style Promotion. Experimentally, the approximation function is synthesized using three basic digital pedometers of low cost, these pedometers were calibrated with an advanced pedometer that calculates calories consumed and computes distance travelled with personal stride input. The synthesized approximation function by means of the designed neural network will allow to reply the calibration experiment for multiple patients with Diabetes Mellitus in Healthy Life Style promotion programs. Artificial Neural Networks have been developed for a wide variety of computational problems in cognition, pattern recognition, and decision making. The Healthy Life Style refer to adequate nutrient ingest, physical activity, time to rest, stress control, and a high self-esteem. The pedometer is a technological device that helps to control the physical activity in the diabetic patient. A brief description of the Artificial Neural Network designed to synthesize the Approximation Function, the obtained Artificial Neural Network structure and results in the Approximation Function synthesis for three patients are presented. The advantages and disadvantages of the method are discussed and our conclusions are presented.
机译:本研究描述了人工神经网络的设计,以合成用于健康生活方式促销的计步器的近似函数。通过实验,使用低成本的三个基本数字计步器合成近似函数,这些计步器用高级计步器进行校准,该计步器计算消耗的卡路里,并计算使用个人步道输入的距离。通过设计的神经网络的合成近似函数将允许在健康生活方式促销计划中回复多个糖尿病患者的校准实验。已经开发了人工神经网络,用于认知,模式识别和决策中的各种计算问题。健康的生活方式是指足够的营养素摄取,身体活动,时间休息,压力控制和高自尊。计步器是一种有助于控制糖尿病患者体育活动的技术装置。介绍了人工神经网络,设计用于合成近似函数的人工神经网络结构,并提出了三个患者的近似函数合成的结果。讨论了该方法的优点和缺点,并提出了我们的结论。

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