The Synergy of Complex Event Processing and Tiny Machine Learning in
Industrial IoT
- URL: http://arxiv.org/abs/2105.03371v1
- Date: Tue, 4 May 2021 14:58:48 GMT
- Title: The Synergy of Complex Event Processing and Tiny Machine Learning in
Industrial IoT
- Authors: Haoyu Ren, Darko Anicic, Thomas Runkler
- Abstract summary: The Industrial Internet-of-Things (IIoT) facilitates efficiency and robustness in factory operations.
Various sensors and field devices play a central role, as they generate a vast amount of real-time data that can provide insights into manufacturing.
The synergy of complex event processing (CEP) and machine learning (ML) has been developed actively in the last years in IIoT to identify patterns in heterogeneous data streams and fuse raw data into tangible facts.
This paper proposes a framework that exploits ML and CEP's synergy at the edge in distributed sensor networks.
- Score: 7.172671995820974
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Focusing on comprehensive networking, big data, and artificial intelligence,
the Industrial Internet-of-Things (IIoT) facilitates efficiency and robustness
in factory operations. Various sensors and field devices play a central role,
as they generate a vast amount of real-time data that can provide insights into
manufacturing. The synergy of complex event processing (CEP) and machine
learning (ML) has been developed actively in the last years in IIoT to identify
patterns in heterogeneous data streams and fuse raw data into tangible facts.
In a traditional compute-centric paradigm, the raw field data are continuously
sent to the cloud and processed centrally. As IIoT devices become increasingly
pervasive and ubiquitous, concerns are raised since transmitting such amount of
data is energy-intensive, vulnerable to be intercepted, and subjected to high
latency. The data-centric paradigm can essentially solve these problems by
empowering IIoT to perform decentralized on-device ML and CEP, keeping data
primarily on edge devices and minimizing communications. However, this is no
mean feat because most IIoT edge devices are designed to be computationally
constrained with low power consumption. This paper proposes a framework that
exploits ML and CEP's synergy at the edge in distributed sensor networks. By
leveraging tiny ML and micro CEP, we shift the computation from the cloud to
the power-constrained IIoT devices and allow users to adapt the on-device ML
model and the CEP reasoning logic flexibly on the fly without requiring to
reupload the whole program. Lastly, we evaluate the proposed solution and show
its effectiveness and feasibility using an industrial use case of machine
safety monitoring.
Related papers
- An Energy-Efficient Ensemble Approach for Mitigating Data Incompleteness in IoT Applications [0.0]
It is important to build IoT-based Machine Learning systems that are robust against data incompleteness while simultaneously being energy efficient.
ENAMLE is a proactive, energy-aware technique for mitigating the impact of concurrent missing data.
We present extensive experimental studies on two distinct datasets that demonstrate the energy efficiency of ENAMLE.
arXiv Detail & Related papers (2024-03-15T15:01:48Z) - Energy-Efficient Edge Learning via Joint Data Deepening-and-Prefetching [9.468399367975984]
We propose a novel offloading architecture called joint data deepening-and-prefetching (JD2P)
JD2P is feature-by-feature offloading comprising two key techniques.
We evaluate the effectiveness of JD2P through experiments using the MNIST dataset.
arXiv Detail & Related papers (2024-02-19T08:12:47Z) - Edge-assisted U-Shaped Split Federated Learning with Privacy-preserving
for Internet of Things [4.68267059122563]
We present an innovative Edge-assisted U-Shaped Split Federated Learning (EUSFL) framework, which harnesses the high-performance capabilities of edge servers.
In this framework, we leverage Federated Learning (FL) to enable data holders to collaboratively train models without sharing their data.
We also propose a novel noise mechanism called LabelDP to ensure that data features and labels can securely resist reconstruction attacks.
arXiv Detail & Related papers (2023-11-08T05:14:41Z) - Filling the Missing: Exploring Generative AI for Enhanced Federated
Learning over Heterogeneous Mobile Edge Devices [72.61177465035031]
We propose a generative AI-empowered federated learning to address these challenges by leveraging the idea of FIlling the MIssing (FIMI) portion of local data.
Experiment results demonstrate that FIMI can save up to 50% of the device-side energy to achieve the target global test accuracy.
arXiv Detail & Related papers (2023-10-21T12:07:04Z) - Online Data Selection for Federated Learning with Limited Storage [53.46789303416799]
Federated Learning (FL) has been proposed to achieve distributed machine learning among networked devices.
The impact of on-device storage on the performance of FL is still not explored.
In this work, we take the first step to consider the online data selection for FL with limited on-device storage.
arXiv Detail & Related papers (2022-09-01T03:27:33Z) - Asynchronous Parallel Incremental Block-Coordinate Descent for
Decentralized Machine Learning [55.198301429316125]
Machine learning (ML) is a key technique for big-data-driven modelling and analysis of massive Internet of Things (IoT) based intelligent and ubiquitous computing.
For fast-increasing applications and data amounts, distributed learning is a promising emerging paradigm since it is often impractical or inefficient to share/aggregate data.
This paper studies the problem of training an ML model over decentralized systems, where data are distributed over many user devices.
arXiv Detail & Related papers (2022-02-07T15:04:15Z) - Deep Reinforcement Learning Assisted Federated Learning Algorithm for
Data Management of IIoT [82.33080550378068]
The continuous expanded scale of the industrial Internet of Things (IIoT) leads to IIoT equipments generating massive amounts of user data every moment.
How to manage these time series data in an efficient and safe way in the field of IIoT is still an open issue.
This paper studies the FL technology applications to manage IIoT equipment data in wireless network environments.
arXiv Detail & Related papers (2022-02-03T07:12:36Z) - Computational Intelligence and Deep Learning for Next-Generation
Edge-Enabled Industrial IoT [51.68933585002123]
We investigate how to deploy computational intelligence and deep learning (DL) in edge-enabled industrial IoT networks.
In this paper, we propose a novel multi-exit-based federated edge learning (ME-FEEL) framework.
In particular, the proposed ME-FEEL can achieve an accuracy gain up to 32.7% in the industrial IoT networks with the severely limited resources.
arXiv Detail & Related papers (2021-10-28T08:14:57Z) - Machine Learning for Massive Industrial Internet of Things [69.52379407906017]
Industrial Internet of Things (IIoT) revolutionizes the future manufacturing facilities by integrating the Internet of Things technologies into industrial settings.
With the deployment of massive IIoT devices, it is difficult for the wireless network to support the ubiquitous connections with diverse quality-of-service (QoS) requirements.
We first summarize the requirements of the typical massive non-critical and critical IIoT use cases. We then identify unique characteristics in the massive IIoT scenario, and the corresponding machine learning solutions with its limitations and potential research directions.
arXiv Detail & Related papers (2021-03-10T20:10:53Z) - Wirelessly Powered Federated Edge Learning: Optimal Tradeoffs Between
Convergence and Power Transfer [42.30741737568212]
We propose the solution of powering devices using wireless power transfer (WPT)
This work aims at the derivation of guidelines on deploying the resultant wirelessly powered FEEL (WP-FEEL) system.
The results provide useful guidelines on WPT provisioning to provide a guaranteer on learning performance.
arXiv Detail & Related papers (2021-02-24T15:47:34Z) - Cost-effective Machine Learning Inference Offload for Edge Computing [0.3149883354098941]
This paper proposes a novel offloading mechanism by leveraging installed-base on-premises (edge) computational resources.
The proposed mechanism allows the edge devices to offload heavy and compute-intensive workloads to edge nodes instead of using remote cloud.
arXiv Detail & Related papers (2020-12-07T21:11:02Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.