A Review on AI for Smart Manufacturing: Deep Learning Challenges and Solutions
Abstract
:1. Introduction
2. Deep Learning Overview
2.1. Neural Networks
2.2. Model Training
2.3. Deep Neural Network Architectures
3. Challenge: Data Quality
3.1. Data Augmentation
3.1.1. Manual Methods
3.1.2. Signal-Processing-Based Methods
3.1.3. Machine-Learning-Based Methods
3.2. Semi-Supervised Learning
3.2.1. Self-Teaching
3.2.2. Generative Models
3.2.3. Graph-Based Methods
3.3. Active Learning
3.3.1. Uncertainty Sampling
3.3.2. Diversity Sampling
3.4. Transfer Learning
3.4.1. Instance-Based Transfer Learning
3.4.2. Feature-Based Transfer Learning
3.4.3. Parameter-Based Transfer Learning
3.5. Continual Learning
3.5.1. Regularization-Based Continual Learning
3.5.2. Memory Reply
3.5.3. Dynamic Architectures
4. Challenge: Data Secrecy
4.1. Elimination Approaches
4.2. Cryptographic Approaches
4.2.1. Homomorphic Encryption
4.2.2. Functional Encryption
4.3. Differential Privacy
4.3.1. Data Noising
4.3.2. Gradient Noising
4.4. Federated Learning
5. Challenge: DNN Reliability
5.1. Concept Drift Detection
5.2. Uncertainty Estimation
5.3. Out-of-Distribution Detection
6. Conclusions Trends
Application Domains | ||||||
---|---|---|---|---|---|---|
Challenges | Algorithms | Quality Assurance | Equipment Maintenance | Yield Enhancement | Collaborative Robots | Supply Chain Management |
Data Augmentation | [64] | [63,66] | [159] | [160] | [161] | |
Semi-supervised Learning | [5,6,72] | [8] | [11] | [15] | [162] | |
Data Quality | Active Learning | [82,163] | [78] | – | [164] | – |
Transfer Learning | [9,10] | [165,166] | [12] | [167] | [168] | |
Continual Learning | [169,170] | [171] | [13] | [14] | [172] | |
Cryptographic Approaches | – | [131,173] | – | [174,175] | [176] | |
Data Secrecy | Differential Privacy | – | [173] | – | [133] | [177] |
Federated Learning | [178] | [131,179] | – | [133,180] | [181] | |
Concept Drift Detection | [140,182] | [141,142] | – | [183] | – | |
DNN Reliability | Uncertainty Estimation | [184,185] | [78,144,145,147] | [186,187] | [188,189] | [190] |
Out of Distribution Detection | – | [152] | – | – | – |
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Contents | Survey Articles |
---|---|
Deep learning basics and list of use cases | Deep learning in industry 4.0—brief overview [22] |
Deep learning basics and list of use cases | Deep learning for smart manufacturing: methods and applications [23] |
Deep learning basics and list of use cases | Data analytics and machine learning for smart process manufacturing: recent advances and perspectives in the big data era [24] |
Machine learning basics and use case categories in smart manufacturing | Machine Learning for industrial applications: A comprehensive literature review [25] |
Machine learning basics and use case categories in smart manufacturing | Machine learning and data mining in manufacturing [26] |
Categorization of machine learning applications in smart manufacturing | A survey of the advancing use and development of machine learning in smart manufacturing [27] |
Machine learning use cases in machining process | Smart machining process using machine learning: a review and perspective on machining industry [28] |
Deep learning for predictive maintenance | Machine learning in predictive maintenance towards sustainable smart manufacturing in industry 4.0 [29] |
Deep learning for predictive maintenance | A survey of predictive maintenance: systems, purposes and approaches [20] |
Deep learning for machinery tool monitoring | A review on deep learning in machining and tool monitoring: methods, opportunities, and challenges [30] |
Deep learning for smart logistics | A review of further directions for artificial intelligence, machine learning, and deep learning in smart logistics [19] |
Deep learning for production process optimization | A review of machine learning for the optimization of production processes [31] |
Deep learning for additive manufacturing | Machine learning in additive manufacturing: state-of-the-art and perspectives [32] |
Deep learning for defect detection | Using deep learning to detect defects in manufacturing: a comprehensive survey and current challenges [33] |
Deep learning for smart grid | Machine learning and deep learning in smart manufacturing: the smart grid paradigm [34] |
Edge computing for deep learning in smart manufacturing | Deep learning for edge computing applications: a state-of-the-art survey [35] |
Software development for deep learning in smart manufacturing | Large-scale machine learning systems in real-world industrial settings: a review of challenges and solutions [21] |
IoT for deep learning in smart manufacturing | A survey on deep learning empowered IoT applications [36] |
Deep Learning Models | Brief Introduction | Examples |
---|---|---|
Convolutional Neural Network (CNN) | Neural networks containing convolutional kernels. Usually used for 2D data, such as visual inspection. | [10,50,51] |
Recurrent Neural Network (RNN) | Neural networks containing recurrent cells. Usually used for data streams, such as sensory stream data analysis. | [44,52,53] |
AutoEncoder (AE) | AEs are usually used for feature extraction since it can learn essential information for data reconstruction. AEs are trained in an unsupervised fashion. | [54,55,56] |
Generative Adversarial Neural Network (GAN) | GANs can learn the statistical distributions of the training data in an unsupervised way. Therefore, GANs are often used for anomaly detection. | [57,58,59] |
Transformer | Transformers can learn to differently weight an important part of the inputs. Transformers were originally used for data streams. | [47,48,60] |
PPML Techniques | Applied Scenarios | Applied Objects |
---|---|---|
Elimination-based Approaches | Cloud | Data |
Homomorphic Encryption | Cloud | Data, Model |
Functional Encryption | Cloud | Data, Model |
Differential Privacy | Cloud, Edge | Data, Model |
Federated Learning | Edge | Architecture |
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Xu, J.; Kovatsch, M.; Mattern, D.; Mazza, F.; Harasic, M.; Paschke, A.; Lucia, S. A Review on AI for Smart Manufacturing: Deep Learning Challenges and Solutions. Appl. Sci. 2022, 12, 8239. https://doi.org/10.3390/app12168239
Xu J, Kovatsch M, Mattern D, Mazza F, Harasic M, Paschke A, Lucia S. A Review on AI for Smart Manufacturing: Deep Learning Challenges and Solutions. Applied Sciences. 2022; 12(16):8239. https://doi.org/10.3390/app12168239
Chicago/Turabian StyleXu, Jiawen, Matthias Kovatsch, Denny Mattern, Filippo Mazza, Marko Harasic, Adrian Paschke, and Sergio Lucia. 2022. "A Review on AI for Smart Manufacturing: Deep Learning Challenges and Solutions" Applied Sciences 12, no. 16: 8239. https://doi.org/10.3390/app12168239
APA StyleXu, J., Kovatsch, M., Mattern, D., Mazza, F., Harasic, M., Paschke, A., & Lucia, S. (2022). A Review on AI for Smart Manufacturing: Deep Learning Challenges and Solutions. Applied Sciences, 12(16), 8239. https://doi.org/10.3390/app12168239