Ferrer Javier, Alba Enrique
Dept. Lenguajes y Ciencias de la Computación, University of Malaga, Spain.
Biosystems. 2019 Dec;186:103962. doi: 10.1016/j.biosystems.2019.04.006. Epub 2019 Apr 17.
The fast demographic growth, together with the population concentration in cities and the increasing amount of daily waste, are factors that are pushing to the limit the ability of waste assimilation by Nature. Therefore, we need technological means to optimally manage of the waste collection process, which represents 70% of the operational cost in waste treatment. In this article, we present a free intelligent software system called BIN-CT (BIN for the CiTy), based on computational learning algorithms, which plans the best routes for waste collection supported by past (historical) and future (predictions) data. The objective of the system is to reduction the cost of the waste collection service minimizing the distance traveled by a truck to collect the waste from a container, thereby reducing the fuel consumption. At the same time the quality of service for the citizen is increased, avoiding the annoying overflows of containers thanks to the accurate fill-level predictions given by BIN-CT. In this article we show the features of our software system, illustrating its operation with a real case study of a Spanish city. We conclude that the use of BIN-CT avoids unnecessary trips to containers, reduces the distance traveled to collect a container by 20%, and generates routes 33.2% shorter than the routes used by the company. Therefore it enables a considerable reduction of total costs and harmful emissions thrown up into the atmosphere.
快速的人口增长,加上人口向城市集中以及每日垃圾量的增加,正将自然对垃圾的同化能力推向极限。因此,我们需要技术手段来优化垃圾收集过程的管理,这一过程占垃圾处理运营成本的70%。在本文中,我们介绍了一个名为BIN-CT(城市垃圾桶)的免费智能软件系统,它基于计算学习算法,利用过去(历史)和未来(预测)数据规划最佳的垃圾收集路线。该系统的目标是降低垃圾收集服务成本,使卡车从容器收集垃圾行驶的距离最小化,从而减少燃料消耗。同时,提高了市民的服务质量,由于BIN-CT给出的准确的满溢程度预测,避免了容器令人烦恼的溢出。在本文中,我们展示了我们软件系统的特点,通过西班牙一个城市的实际案例研究来说明其运作情况。我们得出结论,使用BIN-CT可避免不必要的前往容器的行程,将收集一个容器行驶的距离减少20%,并生成比公司使用的路线短33.2%的路线。因此,它能够大幅降低总成本和向大气排放的有害气体。