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Methods And Systems For Optimizing Risks In Supply Chain Networks

Abstract: A method for optimizing risks in supply chain networks is disclosed. The method includes categorizing, via a risk optimizing device, contextually relevant keywords derived from a user query into a risk category selected from a plurality of risk categories; identifying, via the risk optimizing device, a risk in the supply chain network based on the contextually relevant keywords and the risk category; creating, via the risk optimizing device, a plurality of risk association rules representative of interdependencies of the risk with at least one associated risk; assigning, via the risk optimizing device, priority to each of the plurality of risk association rules based on impact of interdependent risks within corresponding risk association rules; and optimizing a risk association rule assigned high priority within the plurality of risk association rules by removing the risk or one of the at least one associated risk from the risk association rule.

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Notices, Deadlines & Correspondence

Patent Information

Application #
Filing Date
22 January 2016
Publication Number
13/2016
Publication Type
INA
Invention Field
MECHANICAL ENGINEERING
Status
Email
ipo@knspartners.com
Parent Application

Applicants

WIPRO LIMITED
Doddakannelli, Sarjapur Road, Bangalore 560035, Karnataka, India.

Inventors

1. SELVAKUBERAN KARUPPASAMY
5/74, Chandru Homes, Pillayar Kovil Street, Medavakkam, Chennai 600100, Tamil Nadu, India.

Specification

Claims:WE CLAIM
1. A method for optimizing risks in a supply chain network, the method comprising:
categorizing, via a risk optimizing device, contextually relevant keywords derived from a user query into a risk category selected from a plurality of risk categories;
identifying, via the risk optimizing device, a risk in the supply chain network based on the contextually relevant keywords and the risk category;
creating, via the risk optimizing device, a plurality of risk association rules representative of interdependencies of the risk with at least one associated risk;
assigning, via the risk optimizing device, priority to each of the plurality of risk association rules based on impact of interdependent risks within corresponding risk association rules; and
optimizing, via the risk optimizing device, a risk association rule assigned high priority within the plurality of risk association rules by removing the risk or one of the at least one associated risk from the risk association rule.
2. The method of claim 1further comprising performing natural language processing and text analysis on the user query to derive contextually relevant keywords from the user query.
3. The method of claim 1, wherein creating comprises determining a risk level for each of the risk and the at least one associated risk, the risk level being selected from a plurality of risk levels.
4. The method of claim 3, wherein creating further comprises determining a cumulative risk level for the risk and the at least one associated risk.
5. The method of claim 4, wherein the plurality of risk level is selected from a group comprising very high risk level, high risk level, medium risk level, low risk level, and very low risk level.
6. The method of claim 4, wherein determining the risk level comprises assigning a likelihood score, a consequence score, and an overall score to each of a plurality of risks in the supply chain network, the likelihood score for a risk being representative of number of times of historic occurrence of the risk and the consequence score for the risk being representative of impact of the risk on the supply chain network.
7. The method of claim 4, wherein the impact of interdependent risks is ascertained based on the risk level and the cumulative risk level determined for the risk and the at least one associated risk.
8. The method of claim 4, wherein priority is assigned based on the cumulative risk level.
9. The method of claim 1, wherein optimizing comprises determining redundancy of the risk or one of the at least one associated risk in the risk association rule.
10. The method of claim 1 further comprising implementing incremental intelligence using machine learning techniques for future data analysis.
11. A system for optimizing risks in a supply chain network, the system comprising:
at least one processors; and
a computer-readable medium storing instructions that, when executed by the at least one processor, cause the at least one processor to perform operations comprising:
categorizing, via a risk optimizing device, contextually relevant keywords derived from a user query into a risk category selected from a plurality of risk categories;
identifying, via the risk optimizing device, a risk in the supply chain network based on the contextually relevant keywords and the risk category;
creating, via the risk optimizing device, a plurality of risk association rules representative of interdependencies of the risk with at least one associated risk;
assigning, via the risk optimizing device, priority to each of the plurality of risk association rules based on impact of interdependent risks within corresponding risk association rules; and
optimizing, via the risk optimizing device, a risk association rule assigned high priority within the plurality of risk association rules by removing the risk or one of the at least one associated risk from the risk association rule.
12. The system of claim 11, wherein the operations further comprise performing natural language processing and text analysis on the user query to derive contextually relevant keywords from the user query.
13. The system of claim 12, wherein the operation of creating comprises operation of determining a risk level for each of the risk and the at least one associated risk, the risk level being selected from a plurality of risk levels.
14. The system of claim 13, wherein the operation of creating further comprises operation of determining a cumulative risk level for the risk and the at least one associated risk.
15. The system of claim 13, wherein the operation of determining the risk level comprises operation of assigning a likelihood score, a consequence score, and an overall score to each of a plurality of risks in the supply chain network, the likelihood score for a risk being representative of number of times of historic occurrence of the risk and the consequence score for the risk being representative of impact of the risk on the supply chain network.
16. The system of claim 14, wherein the impact of interdependent risks is ascertained based on the risk level and the cumulative risk level determined for the risk and the at least one associated risk.
17. The system of claim 14, wherein priority is assigned based on the cumulative risk level.
18. The system of claim 11, wherein the operation of optimizing comprises operation of determining redundancy of the risk or one of the at least one associated risk in the risk association rule.
19. The system of claim 11, wherein the operations further comprise implementing incremental intelligence using machine learning techniques for future data analysis.

Dated this 22nd day of January, 2016

Swetha SN
Of K&S Partners
Agent for the Applicant
, Description:TECHNICAL FIELD
This disclosure relates generally to supply chain networks and more particularly to methods and systems for optimizing risks in supply chain networks.

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