Deep Reinforcement Learning (DRL) based data analytics framework for Edge based IoT devices latency and resource optimization

Sudhakar Majjari, K. R. Anne, Joseph George
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Abstract

Internet of Things (IoT) trends show rising data processing computational needs. Sensor data is uploaded to backend cloud nodes before data analyses at the network edge. IoT devices are usually resource-constrained and unable to execute operations quickly and accurately. Cloud servers are impractical and increase communication overhead. Cloud platforms offer machine learning services with pretrained models to understand IoT data. To use the cloud service, personal data must be transferred, and network problems may impede timely analysis results. Data and analysis are shifting to edge platforms to solve these concerns. Most edge devices can't analyze and train a lot of data. Edge-enabled systems provide efficient compute and control at the network edge to reduce scalability and latency. IoT applications provide large heterogeneous data, which makes edge computing difficult. To solve this issue, Deep Reinforcement Learning (DRL) based data analytics framework for Edge based IoT devices to enable devices to execute tasks jointly, leveraging proximity and resource complementarity. It supports parallel data input and strengthen the comprehensive communication overhead handling through data scheduling optimization. The simulation results conveys that the proposed approach uses DRL to optimize execution accuracy and time without requiring a priori IoT node information. Moreover, the average delay time, percentage of failure and cost of rewards are computed in which being compared with the existing scheduling methods includes Proximal Policy Optimization technique (PPO), and Deep Deterministic Policy Gradient technique (DDPG).
基于深度强化学习(DRL)的数据分析框架,用于基于边缘的IoT设备延迟和资源优化
物联网(IoT)趋势显示出不断增长的数据处理计算需求。传感器数据上传到后端云节点,然后在网络边缘进行数据分析。物联网设备通常受到资源限制,无法快速准确地执行操作。云服务器不切实际,并且增加了通信开销。云平台提供带有预训练模型的机器学习服务,以理解物联网数据。使用云服务,必须传输个人数据,网络问题可能会影响及时分析结果。数据和分析正在向边缘平台转移,以解决这些问题。大多数边缘设备无法分析和训练大量数据。支持边缘的系统在网络边缘提供高效的计算和控制,以降低可伸缩性和延迟。物联网应用提供了大量异构数据,这使得边缘计算变得困难。为了解决这个问题,基于深度强化学习(DRL)的数据分析框架用于基于边缘的物联网设备,使设备能够共同执行任务,利用邻近性和资源互补性。它支持并行数据输入,并通过数据调度优化加强综合通信开销处理。仿真结果表明,该方法在不需要先验物联网节点信息的情况下,使用DRL优化执行精度和时间。计算了平均延迟时间、失败百分比和奖励成本,并与现有的近端策略优化技术(PPO)和深度确定性策略梯度技术(DDPG)进行了比较。
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