Progress in hardware-assisted real-time garbage collection

Author(s):  
Kelvin Nilsen
Keyword(s):  
2015 ◽  
Vol 49 (11) ◽  
pp. 117-127 ◽  
Author(s):  
David F. Bacon ◽  
Perry Cheng ◽  
Sunil Shukla

Energies ◽  
2020 ◽  
Vol 13 (15) ◽  
pp. 3930 ◽  
Author(s):  
Ayaz Hussain ◽  
Umar Draz ◽  
Tariq Ali ◽  
Saman Tariq ◽  
Muhammad Irfan ◽  
...  

Increasing waste generation has become a significant issue over the globe due to the rapid increase in urbanization and industrialization. In the literature, many issues that have a direct impact on the increase of waste and the improper disposal of waste have been investigated. Most of the existing work in the literature has focused on providing a cost-efficient solution for the monitoring of garbage collection system using the Internet of Things (IoT). Though an IoT-based solution provides the real-time monitoring of a garbage collection system, it is limited to control the spreading of overspill and bad odor blowout gasses. The poor and inadequate disposal of waste produces toxic gases, and radiation in the environment has adverse effects on human health, the greenhouse system, and global warming. While considering the importance of air pollutants, it is imperative to monitor and forecast the concentration of air pollutants in addition to the management of the waste. In this paper, we present and IoT-based smart bin using a machine and deep learning model to manage the disposal of garbage and to forecast the air pollutant present in the surrounding bin environment. The smart bin is connected to an IoT-based server, the Google Cloud Server (GCP), which performs the computation necessary for predicting the status of the bin and for forecasting air quality based on real-time data. We experimented with a traditional model (k-nearest neighbors algorithm (k-NN) and logistic reg) and a non-traditional (long short term memory (LSTM) network-based deep learning) algorithm for the creation of alert messages regarding bin status and forecasting the amount of air pollutant carbon monoxide (CO) present in the air at a specific instance. The recalls of logistic regression and k-NN algorithm is 79% and 83%, respectively, in a real-time testing environment for predicting the status of the bin. The accuracy of modified LSTM and simple LSTM models is 90% and 88%, respectively, to predict the future concentration of gases present in the air. The system resulted in a delay of 4 s in the creation and transmission of the alert message to a sanitary worker. The system provided the real-time monitoring of garbage levels along with notifications from the alert mechanism. The proposed works provide improved accuracy by utilizing machine learning as compared to existing solutions based on simple approaches.


2008 ◽  
Vol 50 (5) ◽  
Author(s):  
Sascha Uhrig

AbstractJava is getting more and more important in embedded systems. However, there are several obstacles like the poor real-time capability, the garbage collection, and the need for a sufficient runtime environment. We present the jamuth Java framework which provides a multithreaded Java processor as IP core for programmable logic devices (FPGAs), a runtime system, and the necessary offline tools. The framework provides CDC compatibility and real-time support for embedded systems as well as a powerful garbage collection.


The amount of garbage that humans generate is rapidly increasing, and it will be impossible to control without radical adjustments. Such increases will have a significant impact on waste management firms, since they would be required to supply resources for garbage collection with little or no money. The goal of this project is to create a smart real-time waste controller system using the conceptual model of a smart electronic bin, which can be built by maximizing resource efficiency and optimizing the resources. This smart garbage bin prototype can automatically open the lid when it recognizes persons who wish to dispose of their trash. Even if people wish to dispose of their trash, if the waste bin is full, the lid will not open. It can also segregate plastic and non-plastic wastes. This smart bin is equipped with additional components such as GPS and GSM, for showing the location and to send alert messages. It can also detect the amount of trash in the garbage bin. The percentage-level of waste inside the bin is determined using an ultrasonic sensor. This data is delivered to a cloud-based monitoring and analytics IoT platform


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