基于物联网的帕米贾汉地区旅游推荐自回归综合移动平均的实现

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引用次数: 0

摘要

Pamijahan是位于西爪哇茂物摄政的一个街道。Pamijahan有各种各样的旅游目的地,其中一个是Cigamea瀑布,Cikuluwung瀑布,和Seribu浇水问题,当游客访问时,其中一个是天气因素,如阴雨天气,在茂物有高地地区,所以对降雨量的变化影响非常大,游客很难选择有阳光条件的旅游景点。解决上述问题的方法是使用自回归综合移动平均法预测雪加米亚瀑布、奇库鲁翁瀑布和色里武瀑布旅游区的阴雨天气天气,因为天气预报过程使用时间序列数据,并借助物联网工具进行数据检索。天气预报测试过程采用自回归综合移动平均法,通过计算尽可能小的均方误差(MSE)和平均绝对预报误差(MAPE)的值,以了解每个指定旅游景点的天气预报过程的准确程度。本研究结果表明,雪加梅、奇库鲁翁和色里武瀑布的天气预报MSE(均方误差)值最小,其中MSE值最小的瀑布,色里武瀑布的温度传感器的均方误差值为0.06,空气湿度为0.59,光强为13.30,因此可以作为游客旅游景点的旅游景点是色里武瀑布。
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Implementation of Autoregressive Integrated Moving Average for Tourism Recommendation in Pamijahan Area Based on Internet of Things
Pamijahan is one of the sub-districts located in Bogor regency, West Java. Pamijahan has a variety of tourist destinations, one of which is the Cigamea waterfall, Cikuluwung waterfall, and the Seribu watering problem when visiting tourists, one of them is the weather factor such as rainy weather where Bogor has a highland area so very big influence on the variation of rain there and visitors have difficulty in choosing tourist sites with sunny conditions, the solution to the problem above is to predict the weather during rainy weather in the tourist areas of Cigamea waterfall, Cikuluwung waterfall, and Seribu waterfall using the Autoreggressive Integrated Moving Average method as weather prediction process uses Time Series data with the help of the Internet of Things tool in data retrieval, the weather prediction testing process uses the Autoreggressive Integrated Moving Average method by calculating the value of MSE (Mean Square Error) and MAPE (Mean Absolute Presentage Error) as minimum as possible to see the level of accuracy of the weather prediction process at each designated tourist site. The results of this study indicate that weather forecasting in Cigamea, Cikuluwung and Seribu waterfalls shows the smallest MSE (Mean Square Error) value, the waterfall that has the smallest MSE value, the Seribu waterfall with the Mean Square Error value of the temperature sensor 0.06, Air Humidity 0.59, and Light Intensity 13.30, so that tourist attractions that can be used as tourist attractions for visitors are the Seribu Waterfall.
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