Skip to content

Commit d4ddefb

Browse files
Merge pull request #317 from DiogoRibeiro7/feat/reserve_branche
feat: phd topic revisited
2 parents d18a7fe + 1aca598 commit d4ddefb

13 files changed

+4117
-9
lines changed

_posts/-_ideas/2030-01-01-new_articles_topics.md

Lines changed: 3 additions & 9 deletions
Original file line numberDiff line numberDiff line change
@@ -15,9 +15,7 @@ tags: []
1515

1616
There are several interesting article topics you can explore under the umbrella of **Predictive Maintenance**, especially focusing on the role of **data science**, **big data**, and **machine learning**. Here’s a list of potential articles you could write:
1717

18-
### 1. Introduction to Predictive Maintenance
19-
- **Overview**: Explain what predictive maintenance (PdM) is and how it differs from preventive and reactive maintenance.
20-
- **Focus**: Basic techniques and traditional approaches to predictive maintenance, including time-based and condition-based maintenance strategies.
18+
2119

2220

2321

@@ -36,9 +34,7 @@ There are several interesting article topics you can explore under the umbrella
3634
- **Overview**: Provide a practical guide to building a predictive maintenance model using Python libraries like Pandas, Scikit-learn, and TensorFlow.
3735
- **Focus**: Walkthrough on collecting data, feature engineering, training models, and deploying them in a real-world industrial context.
3836

39-
### 9. The Impact of Predictive Maintenance on Operational Efficiency
40-
- **Overview**: Discuss how implementing PdM reduces downtime, optimizes maintenance costs, and improves overall equipment effectiveness (OEE).
41-
- **Focus**: Include case studies or industry statistics showing measurable improvements from companies using predictive maintenance.
37+
4238

4339
### 10. Challenges in Implementing Predictive Maintenance
4440
- **Overview**: Highlight the challenges companies face when adopting PdM, such as data quality issues, organizational resistance, and the high cost of implementing IoT infrastructure.
@@ -48,9 +44,7 @@ There are several interesting article topics you can explore under the umbrella
4844
- **Overview**: Explain the role of cloud computing for storing, processing, and analyzing large-scale sensor data in PdM systems.
4945
- **Focus**: Discuss how edge analytics processes data closer to the source (e.g., on-site machinery) for faster, real-time predictions.
5046

51-
### 12. The Role of Natural Language Processing (NLP) in Predictive Maintenance
52-
- **Overview**: Explore how NLP can be used to process unstructured data such as maintenance logs, repair manuals, and service records for predictive insights.
53-
- **Focus**: Techniques to extract useful information from text-based data to complement sensor-based predictive maintenance.
47+
5448

5549
### 13. Case Studies: How Industry Leaders are Using Predictive Maintenance
5650
- **Overview**: Showcase case studies from various industries (manufacturing, transportation, energy) where PdM has led to significant operational gains.

_posts/-_ideas/2030-01-21-PhD_revisited.md

Lines changed: 450 additions & 0 deletions
Large diffs are not rendered by default.

_posts/2025-08-29-role_natural_language_processing_predictive_maintenance.md

Lines changed: 2696 additions & 0 deletions
Large diffs are not rendered by default.

_posts/2025-08-31-impact_predictive_maintenance_operatrional_efficiency.md

Lines changed: 968 additions & 0 deletions
Large diffs are not rendered by default.
1.65 MB
Loading
1.19 MB
Loading
457 KB
Loading
3.45 MB
Loading
2.33 MB
Loading
4.73 MB
Loading

0 commit comments

Comments
 (0)