利用机器学习算法分析和优化制冷系统

A. Husainy, Bhushan S Kumbhar, Prajwal S. Chavan, Ajeem A. Attar, Hemant A. Patil
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引用次数: 0

摘要

根据世界卫生组织规定的疫苗储存和指南,冷链/冷藏在保存疫苗方面发挥着重要作用,比大多数其他保存方法都要好。采用相变材料的主要目标是提高性能、冷却持续时间、存储容量,并在停电期间保持更长的稳定冷却效果。在实验装置中,解码使用无机和共晶相变材料,这些材料被封装在疫苗储存箱内的塑料容器中。该项目将包括从安装在机柜中的传感器收集数据,并使用机器学习算法分析数据并产生见解。该项目的结果可用于为疫苗储存的最佳做法提供信息,并有助于开发更高效和有效的橱柜管理系统。本项目探索使用机器学习技术来优化疫苗在橱柜中的储存。适当的储存对于保持疫苗效力至关重要,因此必须确保将温度和湿度保持在特定范围内。机器学习模型可以被训练来预测寒冷房间的温度和湿度水平,并检测可能表明潜在问题的异常情况。这有助于改善对药柜的监测和维护,降低疫苗变质的风险。像回归和分类这样的机器学习算法被用于web应用程序,因为它们为我们提供连续和离散值作为输出。像pandas, Numpy, sklearn, matplotlib这样的库用于预测和可视化,因为它可以预测温度和湿度等实际方面。还开发了用户界面,可以从任何用户获取输入,并根据用户的输入显示数据。该项目将包括从安装在机柜中的传感器收集数据,并使用机器学习算法分析数据并产生见解。该项目的结果可用于为疫苗储存的最佳做法提供信息,并有助于开发更高效和有效的橱柜管理系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysing and Optimizing the Refrigeration System Using Machine Learning Algorithm
The Cold chain/Refrigeration plays an important role for preserving vaccines as per the vaccine storage and guidelines prescribed by World Health Organizations and it is better than most of other preservation methods. The primary goal of adopting phase change material is to increase performance, cooling duration, capacity for storage, and to sustain the steady cooling effect for a longer length of time during power outages. In experimental set up it is decoded to use Inorganic and Eutectic phase change materials which is encapsulated in plastic containers inside the vaccine storage. The project will involve collecting data from sensors installed in cabinet and using machine learning algorithms to analyse the data and generate insights. The results of the project can be used to inform best practices for vaccine storage and contribute to the development of more efficient and effective cabinet management systems. This project explores the use of machine learning techniques to optimize the storage of vaccines in cabinet. Proper storage is critical to maintain vaccine efficacy, and therefore it is important to ensure that the temperature and humidity are kept within specific ranges. Machine learning models can be trained to predict the temperature and humidity levels in the cold rooms and to detect anomalies that may indicate a potential problem. This can help improve the monitoring and maintenance of the cabinet and reduce the risk of vaccine spoilage. Machine Learning algorithms like Regression and Classification are used on web-app because they provide us with continuous as well as discrete value as an output. Libraries like pandas, Numpy, sklearn, matplotlib are used to predict along with visualization because of which it will be possible to forecast the actual aspects like temperature and humidity. User Interface has also been developed which acquires input from any user and displays the data according to user’s inputs. The project will involve collecting data from sensors installed in cabinet and using machine learning algorithms to analyse the data and generate insights. The results of the project can be used to inform best practices for vaccine storage and contribute to the development of more efficient and effective cabinet management systems.
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