...
首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Metaheuristic and Machine Learning-Based Smart Engine for Renting and Sharing of Agriculture Equipment
【24h】

Metaheuristic and Machine Learning-Based Smart Engine for Renting and Sharing of Agriculture Equipment

机译:基于机器学习和机器学习的智能发动机,用于租用和分享农业设备

获取原文
           

摘要

Recently, many companies have substituted human labor with robotics. Some farmers are sharing different perspectives on the incorporation of technology into farming techniques. Some are willing to accept the technology, some are hesitant and bemused to adapt modern technology, and others are uncertain and are worried about the potential of technology to cause havoc and decrease yields. The third group prevails the most in the developed world, for lack of know-how, including translation of utility and, most significantly, the expense involved. A special Smart Tillage platform is established to solve the above issues. A smart-engine-based decision has been developed, which further uses classification and regression trees to shift towards decision-making. The decision is focused entirely on different input factors, such as type of crop, time/month of harvest, type of plant required for the crop, type of harvest, and authorised rental budget. Sitting on top of this would be a recommendation engine that is powered by deep learning network to suggest the escalation of a farmer from lower to higher category, namely, small to medium to large. A metaheuristic is one of the best computing techniques that help for solving a problem without the exhaustive application of a procedure. Recommendations will be cost-effective and suitable for an escalating update depending on the use of sufficient amends, practices, and services. We carried out a study of 562 agriculturists. Owing to the failure to buy modern equipment, growers are flooded by debt. We question if customers will be able to rent and exchange appliances. The farmers would be able to use e-marketplace to develop their activities.
机译:最近,许多公司用机器人替代人工劳动力。一些农民正在分享有关将技术纳入农业技术的不同观点。有些人愿意接受这项技术,有些人犹豫不决,可以适应现代技术,而其他人则不确定,担心技术造成的技术潜力和降低收益率。第三组在发达国家中占有最多,因为缺乏专业知识,包括效用的翻译,最重要的是所涉及的费用。建立一个特殊的智能耕作平台来解决上述问题。已经开发了一种基于智能发动机的决定,其进一步使用分类和回归树转向决策。该决定完全侧重于不同的输入因素,例如作物类型,收获的时间/月,作物类型的植物类型,收获类型和授权租赁预算。坐在顶部是一个推荐引擎,由深度学习网络提供动力,以建议农民从较低到更高类别的升级,即小于中等到大。成分型是最好的计算技术之一,有助于解决问题而不彻底应用程序。根据使用足够的修改,实践和服务,建议将具有成本效益,适合更新更新。我们进行了对562名农业学家的研究。由于未能购买现代化设备,种植者被债务淹没。我们询问客户是否能够租用和交换设备。农民将能够使用电子市场发展他们的活动。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号