基于物联网的植物环境分类序列模糊关联规则挖掘算法

W. Wedashwara, Candra Ahmadi, I Wayan Agus Arimbawa
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引用次数: 3

摘要

每一种植物都需要一个与其适应能力相适应的环境。然而,环境总是在变化,因此需要定期分析以保持植物的肥力。环境数据,如土壤和空气的温度、湿度、降雨、光照强度等,可以使用计算机算法以顺序(时间序列)矩阵的形式进行处理。提出了一种基于物联网的植物环境分类时序模糊关联规则挖掘(FARM)方法。FARM用于从物联网传感器采集的植物环境数据中提取模糊隶属度形式的关联规则。模糊用于方便传感器数据的分组,并在隶属度无关时检测环境的变化。模糊隶属度也映射基于时间序列来解释常规的环境变化。本文展示了用于植物环境和物联网电路原型的FARM算法的结果。利用常青树(Aglaonema costatum)实时数据采集对FARM算法和物联网进行了评价。结果表明,该方法能够提取出不同依存度参数的相关模糊规则。每一种植物都需要一个与其适应能力相适应的环境。然而,环境总是在变化,因此需要定期分析以保持植物的肥力。环境数据,如土壤和空气的温度、湿度、降雨、光照强度等,可以使用计算机算法以顺序(时间序列)矩阵的形式进行处理。提出了一种基于物联网的植物环境分类时序模糊关联规则挖掘(FARM)方法。FARM用于从物联网传感器采集的植物环境数据中提取模糊隶属度形式的关联规则。模糊用于方便传感器数据的分组,并在隶属度无关时检测环境的变化。模糊隶属度也映射基于时间序列来解释常规的环境变化。本文展示了用于植物环境和物联网电路原型的FARM算法的结果。FARM算法和物联网评估…
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential fuzzy association rule mining algorithm for plants environment classification using internet of things
Every plants need an environment which is in accordance with its adaptability. However, the environment always changes so that it requires regular analysis to maintain plant fertility. Environmental data such as temperature, humidity from soil and air, rainfall, light intensity can be processed using computer algorithms in the form of a sequential (time series) matrix. The paper proposed a sequential Fuzzy Association Rule Mining (FARM) for plants environment classification using Internet of Things (IoT). FARM is used to extract association rule in form of fuzzy memberships from plant environment data that collected from sensors of IoT. Fuzzy is used to facilitate grouping of sensor data and detect changes in the environment when the degree of membership becomes irrelevant. Fuzzy membership degrees are also mapped based on time series to interpret routine environmental changes. The paper showed results of a FARM algorithm for plant environments and prototypes from IoT circuits. FARM algorithm and IoT evaluated using real time data collecting of Aglaonema costatum (Chinese Evergreen). The results shown the FARM capable to extract relevant fuzzy rules with different parameter of tolerance of dependent.Every plants need an environment which is in accordance with its adaptability. However, the environment always changes so that it requires regular analysis to maintain plant fertility. Environmental data such as temperature, humidity from soil and air, rainfall, light intensity can be processed using computer algorithms in the form of a sequential (time series) matrix. The paper proposed a sequential Fuzzy Association Rule Mining (FARM) for plants environment classification using Internet of Things (IoT). FARM is used to extract association rule in form of fuzzy memberships from plant environment data that collected from sensors of IoT. Fuzzy is used to facilitate grouping of sensor data and detect changes in the environment when the degree of membership becomes irrelevant. Fuzzy membership degrees are also mapped based on time series to interpret routine environmental changes. The paper showed results of a FARM algorithm for plant environments and prototypes from IoT circuits. FARM algorithm and IoT eval...
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