基于深度学习的I型和ii型光型红斑预测系统

Juan Felipe Puerta Barrera, D. A. Hurtado, Robinson Jimenez Moreno
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引用次数: 4

摘要

背景:太阳是电磁辐射的天然来源,在太阳上可以发现紫外线(UV),其中只有a类和B类能够以不同的比例照射地球表面。虽然阳光有助于人体皮肤形成维生素D,骨骼矿化,以及机体吸收钙和磷,但长时间暴露在紫外线辐射下会对皮肤造成损害,对人体健康产生不利影响,如红斑形成、光毒性、光过敏、特发性病变和光性皮炎等。本文介绍了利用紫外线指数标准和光型I和II允许的辐射剂量限值,开发人体暴露于可引起皮肤红斑的太阳紫外线照射时间预测系统的结果,旨在预测这类病变的产生。这是由基于深度学习技术的人工智能算法(如深度信念网络和反向传播)实现的。这些算法使用美国国家航空航天局(NASA)提供的气象数据作为神经网络的训练参数,如天空晴朗指数、水平表面辐射和平均气温。利用这些数据,训练了一个神经网络,旨在预测数据输入的下一年的紫外线指数,此外,还应用了一些数学回归,以允许以这种方式获得紫外线指数沿一天的行为的方法。同样,这一信息也被用来估计从早上6点到下午6点这段时间的最大日照时间。本文还在研究结果的基础上提出了一些结论,试图为实现神经网络建立一些重要的考虑因素。
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PREDICTION SYSTEM OF ERYTHEMAS FOR PHOTOTYPES I AND II, USING DEEP-LEARNING
Background: The sun is a natural source of electromagnetic radiation, upon which are found the ultraviolet (UV) rays, where only the types A and B are able to irradiate over the surface of the Earth in different proportions. Although the sun helps human skin in the formation of vitamin D, the mineralization of bones, and absorption of calcium and phosphorus in the organism, it can cause damage on the skin by prolonged exposure to UV radiation, generating adverse effects on human health like erythema formation, photo-toxicity, photo-allergy, idiopathic lesions, and photo-dermatitis, among others. This paper, shows the results of developing a prediction system of the exposure time of a person to UV rays coming from the sun, which can cause erythema on human skin, using the standards in UV index and the dose limits of radiation allowed for phototypes I and II, aiming to foresee the generation of these kind of lesions. This was made by the implementation of artificial intelligence algorithms like Deep Belief Networks and Backpropagation, based in the Deep Learning technique. These algorithms use as training parameters for the neural network, the meteorological data such as the sky clearness index, the radiation on the horizontal surface and average air temperature, supplied by the National Aeronautics and Space Administration (NASA). With the data, a neural network aiming to foresee the UV index for the following year of the data input was trained, in addition some mathematical regressions were applied allowing in this way, to obtain an approach to the behavior of the UV index along the day. Likewise, this information was used to estimate the maximum time of sun exposure, for the period of time contained between 6:00 a.m. and 6:00 p.m. This paper, also presents some conclusions based in the results found, which try to establish some important considerations in order to implement the neural networks.
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