Advanced Machine Learning Techniques for Fault Diagnostics and Prognostics: From Modern Complex Manufacturing Systems to Healthcare
用于故障诊断和预测的先进机器学习技术:从现代复杂制造系统到医疗保健
基本信息
- 批准号:RGPIN-2019-06966
- 负责人:
- 金额:$ 1.89万
- 依托单位:
- 依托单位国家:加拿大
- 项目类别:Discovery Grants Program - Individual
- 财政年份:2022
- 资助国家:加拿大
- 起止时间:2022-01-01 至 2023-12-31
- 项目状态:已结题
- 来源:
- 关键词:
项目摘要
In today's globalized, interconnected, and competitive market, it is critical and of paramount importance that the Modern Complex Manufacturing and Service (MCMS) systems, including but not limited to aerospace, transportation and smart power grid, operate at their full potential with highest achievable reliability. Such MCMS systems are subject to random failures due to degradation and low-quality parts, which could lead to a variety of severe consequences ranging from destruction of infrastructures to endangering human lives. To avoid costly failures, tremendous efforts have to be invested in both Quality and Maintenance concepts, which are the target areas of the proposed research program. The objective of this research program, entitled "Advanced Machine Learning Techniques for Fault Diagnostics and Prognostic: From Modern Complex Manufacturing Systems to Healthcare," is to investigate and implement promising research ideas in the design, development, and application of state-of-the-art Artificial Intelligence (AI) and Machine Learning (ML) techniques that contribute to advancement of fault diagnostics/prognostics in process monitoring and maintenance. Recently, advancements in sensing technologies with progressive advancements in computation and communication technologies have resulted in exponential growth of high-dimensional and multi-modal streaming (HDMS) condition monitoring (CM) data. Efficient utilization of HDMS data leads to highly accurate prediction results in process/system health diagnostics/prognostics. To achieve the aforementioned goal (i.e., to efficiently utilize these ever growing sources of CM data), recently, there has been a great surge of interest in AI/ML based data-driven methodologies. Similar to digitalization which transformed end-to-end business models, the AI and ML are positioning themselves as the transformative technologies of the century leaving industries with two options: "Embrace the process/system monitoring via AI/ML solutions or get left behind''. The "Common Theme'' of this research program is to apply advanced, hybrid (i.e., coupled with state-of-the-art statistical methods), and deep AI/ML techniques for process quality control, maintenance management, and survival analysis. In particular, the proposed research program focuses to address the following rigid research challenges: (i) How to monitor and control manufacturing processes with HDMS data? (ii) How to design "deep'' representations to monitor/control manufacturing processes/systems with HDMS data? (iii) How to develop optimal maintenance policy for a MCMS system subject to degradation via HDMS data? How to combine event data and CM data? In conclusion, the proposed research program is believed to be timely and of significant importance for development of future quality control and CBM programs in Canada. Should the new knowledge prove as valuable as I hope, it is expected they will have a significant impact on our country.
在当今全球化、互联化和竞争激烈的市场中,现代复杂制造和服务(MCMS)系统(包括但不限于航空航天、交通运输和智能电网)以最高的可靠性充分发挥其潜力是至关重要的。此类MCMS系统会因退化和低质量部件而出现随机故障,这可能会导致从破坏基础设施到危及人类生命等各种严重后果。为了避免代价高昂的故障,巨大的努力必须投入到质量和维护的概念,这是拟议的研究计划的目标领域。该研究计划的目标题为“用于故障诊断和预后的高级机器学习技术:从现代复杂制造系统到医疗保健,”是调查和实施有前途的研究思路,在设计,开发,以及最先进的人工智能(AI)和机器学习(ML)技术的应用,有助于故障诊断的进步/过程监控和维护的自动化。 最近,随着计算和通信技术的进步,传感技术的进步已经导致高维和多模态流(HDMS)状态监测(CM)数据的指数增长。HDMS数据的有效利用导致过程/系统健康诊断/故障诊断中的高度准确的预测结果。为了实现上述目标(即,为了有效地利用这些不断增长的CM数据源),最近,对基于AI/ML的数据驱动方法的兴趣激增。与改变端到端商业模式的数字化类似,人工智能和机器学习将自己定位为世纪的变革性技术,给行业留下了两个选择:“通过人工智能/机器学习解决方案拥抱流程/系统监控,或者落后”。 这项研究计划的“共同主题”是应用先进的,混合的(即,再加上最先进的统计方法),以及用于过程质量控制、维护管理和生存分析的深度AI/ML技术。特别是,拟议的研究计划重点解决以下刚性的研究挑战:(一)如何监测和控制制造过程与HDMS数据?(ii)如何设计“深度”表示来监控/控制HDMS数据的制造过程/系统?(iii)如何制定最佳的维护策略,为MCMS系统受到退化通过HDMS数据?如何将联合收割机数据和CM数据结合起来?总之,建议的研究计划被认为是及时的,并在加拿大未来的质量控制和煤层气项目的发展具有重要意义。如果新知识证明像我希望的那样有价值,预计它们将对我们国家产生重大影响。
项目成果
期刊论文数量(0)
专著数量(0)
科研奖励数量(0)
会议论文数量(0)
专利数量(0)
数据更新时间:{{ journalArticles.updateTime }}
{{
item.title }}
{{ item.translation_title }}
- DOI:
{{ item.doi }} - 发表时间:
{{ item.publish_year }} - 期刊:
- 影响因子:{{ item.factor }}
- 作者:
{{ item.authors }} - 通讯作者:
{{ item.author }}
数据更新时间:{{ journalArticles.updateTime }}
{{ item.title }}
- 作者:
{{ item.author }}
数据更新时间:{{ monograph.updateTime }}
{{ item.title }}
- 作者:
{{ item.author }}
数据更新时间:{{ sciAawards.updateTime }}
{{ item.title }}
- 作者:
{{ item.author }}
数据更新时间:{{ conferencePapers.updateTime }}
{{ item.title }}
- 作者:
{{ item.author }}
数据更新时间:{{ patent.updateTime }}
Naderkhani, Farnoosh其他文献
MIXCAPS: A capsule network-based mixture of experts for lung nodule malignancy prediction
- DOI:
10.1016/j.patcog.2021.107942 - 发表时间:
2021-04-01 - 期刊:
- 影响因子:8
- 作者:
Afshar, Parnian;Naderkhani, Farnoosh;Plataniotis, Konstantinos N. - 通讯作者:
Plataniotis, Konstantinos N.
Semi-supervised clustering-based method for fault diagnosis and prognosis: A case study
- DOI:
10.1016/j.ress.2022.108405 - 发表时间:
2022-03-10 - 期刊:
- 影响因子:8.1
- 作者:
Azar, Kamyar;Hajiakhondi-Meybodi, Zohreh;Naderkhani, Farnoosh - 通讯作者:
Naderkhani, Farnoosh
Naderkhani, Farnoosh的其他文献
{{
item.title }}
{{ item.translation_title }}
- DOI:
{{ item.doi }} - 发表时间:
{{ item.publish_year }} - 期刊:
- 影响因子:{{ item.factor }}
- 作者:
{{ item.authors }} - 通讯作者:
{{ item.author }}
{{ truncateString('Naderkhani, Farnoosh', 18)}}的其他基金
Advanced Machine Learning Techniques for Fault Diagnostics and Prognostics: From Modern Complex Manufacturing Systems to Healthcare
用于故障诊断和预测的先进机器学习技术:从现代复杂制造系统到医疗保健
- 批准号:
RGPIN-2019-06966 - 财政年份:2021
- 资助金额:
$ 1.89万 - 项目类别:
Discovery Grants Program - Individual
Advanced Machine Learning Techniques for Fault Diagnostics and Prognostics: From Modern Complex Manufacturing Systems to Healthcare
用于故障诊断和预测的先进机器学习技术:从现代复杂制造系统到医疗保健
- 批准号:
RGPIN-2019-06966 - 财政年份:2020
- 资助金额:
$ 1.89万 - 项目类别:
Discovery Grants Program - Individual
Advanced Machine Learning Techniques for Fault Diagnostics and Prognostics: From Modern Complex Manufacturing Systems to Healthcare
用于故障诊断和预测的先进机器学习技术:从现代复杂制造系统到医疗保健
- 批准号:
DGECR-2019-00318 - 财政年份:2019
- 资助金额:
$ 1.89万 - 项目类别:
Discovery Launch Supplement
Advanced Machine Learning Techniques for Fault Diagnostics and Prognostics: From Modern Complex Manufacturing Systems to Healthcare
用于故障诊断和预测的先进机器学习技术:从现代复杂制造系统到医疗保健
- 批准号:
RGPIN-2019-06966 - 财政年份:2019
- 资助金额:
$ 1.89万 - 项目类别:
Discovery Grants Program - Individual
Event-Triggered and Multi-Sensor Condition Monitoring for Modern Manufacturing Systems
现代制造系统的事件触发和多传感器状态监测
- 批准号:
502800-2017 - 财政年份:2017
- 资助金额:
$ 1.89万 - 项目类别:
Postdoctoral Fellowships
相似国自然基金
Understanding structural evolution of galaxies with machine learning
- 批准号:n/a
- 批准年份:2022
- 资助金额:10.0 万元
- 项目类别:省市级项目
相似海外基金
Machine Learning for Improving Product Quality in Advanced Manufacturing
机器学习提高先进制造中的产品质量
- 批准号:
10073076 - 财政年份:2023
- 资助金额:
$ 1.89万 - 项目类别:
Grant for R&D
Advanced machine learning to empower ultra-sensitive liquid biopsy in melanoma and non-small cell lung cancer
先进的机器学习使黑色素瘤和非小细胞肺癌的超灵敏液体活检成为可能
- 批准号:
10591304 - 财政年份:2023
- 资助金额:
$ 1.89万 - 项目类别:
Sustainable Maritime Transportation Network considering Sulphur Fuel Regulation - Application of Advanced Machine Learning and Optimization
考虑硫燃料监管的可持续海上运输网络 - 先进机器学习和优化的应用
- 批准号:
2885828 - 财政年份:2023
- 资助金额:
$ 1.89万 - 项目类别:
Studentship
Advanced Machine Learning with Bilevel Optimization
具有双层优化的高级机器学习
- 批准号:
DP230101540 - 财政年份:2023
- 资助金额:
$ 1.89万 - 项目类别:
Discovery Projects
Using machine learning and advanced data science to revolutionise clinical trial data management
利用机器学习和先进的数据科学彻底改变临床试验数据管理
- 批准号:
10067048 - 财政年份:2023
- 资助金额:
$ 1.89万 - 项目类别:
Collaborative R&D
CSAMGuard: Leveraging Advanced Machine Learning to Protect Against CSAM Link Obfuscation
CSAMGuard:利用先进的机器学习来防止 CSAM 链接混淆
- 批准号:
10073540 - 财政年份:2023
- 资助金额:
$ 1.89万 - 项目类别:
Collaborative R&D
IUCRC Phase II Georgia Institute of Technology: Center for Advanced Electronics through Machine Learning [CAEML]
IUCRC 第二期佐治亚理工学院:机器学习先进电子学中心 [CAEML]
- 批准号:
2345055 - 财政年份:2023
- 资助金额:
$ 1.89万 - 项目类别:
Continuing Grant
SBIR Phase II: Accelerating R&D through Streamlined Machine Learning Algorithms for Small Data Applications in Advanced Manufacturing
SBIR 第二阶段:加速 R
- 批准号:
2325045 - 财政年份:2023
- 资助金额:
$ 1.89万 - 项目类别:
Cooperative Agreement
SBIR Phase I: Secure Image Recognition and Machine Learning Using Advanced Cryptography
SBIR 第一阶段:使用高级加密技术进行安全图像识别和机器学习
- 批准号:
2304348 - 财政年份:2023
- 资助金额:
$ 1.89万 - 项目类别:
Standard Grant
Advanced value of Sensor Data in Cycling through Machine Learning
通过机器学习实现传感器数据在骑行中的先进价值
- 批准号:
10074539 - 财政年份:2023
- 资助金额:
$ 1.89万 - 项目类别:
Collaborative R&D