首页> 外文会议>2011 IEEE 2nd International Conference on Software Engineering and Service >Sheep and goat expert system using artificial bee colony (ABC) algorithm and particle swarm optimization (PSO) algorithm
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Sheep and goat expert system using artificial bee colony (ABC) algorithm and particle swarm optimization (PSO) algorithm

机译:使用人工蜂群(ABC)算法和粒子群优化(PSO)算法的绵羊和山羊专家系统

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Machine learning is a subfield of Artificial Intelligence, concerned with the development of algorithms that allow computers to learn based on data, such as sensor data or databases. A major focus of machine learning research is to automatically learn to recognize complex patterns and make intelligent decisions based on such data. In this paper both sheep and goat disease database is created using rule-based techniques and machine-learning algorithms (ABC and PSO). These techniques are also applied on this database to develop expert systems to diagnose the diseases affected to sheep and goat animals. The system diagnoses the diseases for the different symptoms entered by the user dynamically. If the symptoms entered by the user matches to the rules already available in the Knowledge base designed by the expert, it displays the actual disease with which sheep is suffering with. Else it displays a message saying that the knowledge is insufficient. In this case the system calls the technique called, Particle Swarm Optimization. Using this system determines the narrowest probabilistic disease with which the animal is suffering. Here the PSO technique is grouping by the intelligence in order to get the optimistic solution for the entered symptoms by the user. The proposed system is also supported by another feature called as Artificial Bee Colony Optimization i.e., a probabilistic application to enhance the capabilities.
机译:机器学习是人工智能的一个子领域,它关注算法的开发,该算法使计算机能够基于数据(例如传感器数据或数据库)进行学习。机器学习研究的主要重点是自动学习识别复杂的模式并基于此类数据做出明智的决策。在本文中,绵羊和山羊疾病数据库都是使用基于规则的技术和机器学习算法(ABC和PSO)创建的。这些技术也被应用到该数据库中,以开发专家系统来诊断影响绵羊和山羊动物的疾病。该系统针对用户动态输入的不同症状诊断疾病。如果用户输入的症状与专家设计的知识库中已有的规则相匹配,它将显示绵羊所患的实际疾病。否则,它显示一条消息,说明知识不足。在这种情况下,系统将其称为粒子群优化技术。使用该系统可以确定动物所患的最狭窄的概率性疾病。在这里,PSO技术通过智能进行分组,以便获得用户对所输入症状的乐观解决方案。所提出的系统还被称为人工蜂群优化的另一功能所支持,即,一种用于增强能力的概率应用程序。

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