利用专家系统方法提高各种农业情景预测和解决的准确性

Tambun Sihotang, D. Landgrebe, Firta Sari Panjaitan
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引用次数: 0

摘要

提出的研究开发专家系统,以准确预测和推荐各种农业情景的解决方案,在几个方面是新颖的:该研究涉及知识表示、人工智能和机器学习算法、数据集成和分析技术、评估和验证技术等多种技术的集成,以开发一个全面有效的农业专家系统。跨学科方法:该研究采用跨学科方法,汇集了来自计算机科学、农业和数据科学等不同领域的专家,开发了一个考虑到农民和农业专业人员需求的专家系统。使用真实世界的数据:研究使用真实世界的数据来测试和验证专家系统的性能,这增加了其在实际农业场景中的适用性和有效性。定制和个性化:建议的专家系统可以根据个体农民和农业专业人员的独特需求进行定制和个性化,这将使其更加有用和用户友好。提高农业生产力和可持续性的潜力:发展有效的农业专家系统具有提高农业生产力和可持续性的潜力,通过改善粮食安全和减少对环境的影响,这不仅有利于农民和农业专业人员,而且有利于更广泛的社会。总之,关于开发专家系统以准确预测和推荐各种农业情景解决方案的拟议研究是一种新颖的跨学科方法,具有通过提高生产力、可持续性和盈利能力来改变农业的潜力。未来农业专家系统开发的研究可以建立在以下几个方面:物联网(IoT)技术的集成:物联网技术的集成可以提供各种参数的实时数据,如土壤湿度、温度和湿度,可用于提高专家系统预测和建议的准确性。遥感技术的集成:卫星图像等遥感技术的集成可以提供更广阔的农业景观视图,并使专家系统能够预测和推荐大规模农业场景的解决方案。用户友好界面的开发:未来的研究可以集中在开发用户友好的界面,使农民和农业专业人员能够轻松访问和理解专家系统的预测和建议。使用可解释的人工智能技术:未来的研究可以探索使用可解释的人工智能技术,使专家系统能够为其预测和建议提供解释,这可以提高用户对系统的信任和信心。专家系统在发展中国家的实施:未来的研究可以侧重于在发展中国家实施专家系统,那里的小农在获取和利用农业技术方面面临重大挑战。专家系统可以根据当地情况和小农的需求进行调整,以提高他们的生产力和生计。农业专家系统开发的未来研究可以集中在新技术的整合、用户友好界面的开发、可解释的人工智能技术的使用以及在发展中国家的实施,以提高专家系统的有效性和可及性。
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Expert system approach to improve the accuracy of prediction and solution of various agricultural scenarios
The proposed research on developing expert systems for accurately predicting and recommending solutions for various agricultural scenarios is novel in several ways:  Integration of Multiple Technologies: The research involves the integration of multiple technologies such as knowledge representation, artificial intelligence and machine learning algorithms, data integration and analysis techniques, and evaluation and validation techniques to develop a comprehensive and effective expert system for agriculture. Interdisciplinary Approach: The research is an interdisciplinary approach that brings together experts from various fields such as computer science, agriculture, and data science to develop an expert system that takes into account the needs of farmers and agriculture professionals. Use of Real-World Data: The research uses real-world data to test and validate the performance of the expert system, which increases its applicability and effectiveness in practical agricultural scenarios. Customization and Personalization: The proposed expert system can be customized and personalized based on the unique needs of individual farmers and agriculture professionals, which will make it more useful and user-friendly. Potential to Enhance Agriculture Productivity and Sustainability: The development of an effective expert system for agriculture has the potential to enhance productivity and sustainability in agriculture, which will benefit not only the farmers and agriculture professionals but also the wider society by improving food security and reducing environmental impact. In summary, the proposed research on developing expert systems for accurately predicting and recommending solutions for various agricultural scenarios is a novel and interdisciplinary approach that has the potential to transform agriculture by improving productivity, sustainability, and profitability. Future research in the development of expert systems for agriculture can build on the proposed research in several ways: Integration of Internet of Things (IoT) Technology: The integration of IoT technology can provide real-time data on various parameters such as soil moisture, temperature, and humidity, which can be used to improve the accuracy of the expert system predictions and recommendations. Integration of Remote Sensing Technology: The integration of remote sensing technology such as satellite imagery can provide a broader view of agricultural landscapes and enable the expert system to predict and recommend solutions for large-scale agricultural scenarios. Development of User-Friendly Interfaces: Future research can focus on developing user-friendly interfaces that enable easy access and understanding of expert system predictions and recommendations by farmers and agriculture professionals. Use of Explainable AI Techniques: Future research can explore the use of explainable AI techniques that enable the expert system to provide explanations for its predictions and recommendations, which can improve user trust and confidence in the system. Implementation of Expert System in Developing Countries: Future research can focus on the implementation of expert systems in developing countries where smallholder farmers face significant challenges in accessing and utilizing agricultural technology. The expert system can be adapted to the local context and needs of smallholder farmers to improve their productivity and livelihoods. Ffuture research in the development of expert systems for agriculture can focus on the integration of new technologies, development of user-friendly interfaces, use of explainable AI techniques, and implementation in developing countries to improve the effectiveness and accessibility of the expert system.
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