Quinn Risch’s scientific contributions

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Publications (6)


How artificial intelligence can enable data classification for market sizing - Insights from applications in practice
  • Article

November 2024

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1 Read

International Journal of Information Management Data Insights

L. Stallings

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P. Bhat

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J. Jacobs

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[...]

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Q. Risch


Proposed method of forecasting cumulative effects of variation in manufacturing

January 2022

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5 Reads

Engineering Solid Mechanics

Manufacturing, in general, creates a finished good from a set of simpler supplied parts. Supplied parts are installed into higher assemblies, higher assemblies move into even higher assemblies, and eventually this terminates at the finished good. Delays or variation during the manufacturing process ripple all the way to the finished good, possibly from different branches of the build and possibly magnifying any individual effect. There is extensive literature regarding Lean Manufacturing and it provides strategies and business philosophy to deal with variation, however it offers little in the way of quantitative analysis on the effects of that variation upon the whole. Digital Twins and discrete event simulations can and have been used to model the impact of variation in its totality. Various papers on Digital Twins have explored how to model manufacturing, but very little on generalized behavior. (i.e. How schedule slips at the subassemblies impacts the delivery dates / quantities at the finished good level). This paper explores the analytical quantitative effects of input/sales variation through the manufacturing cycle and the resultant effect on the finished good manufacturing schedule/cycle. We demonstrate that even small random variations/interruptions propagate up the build chain, get reduced in magnitude and end up producing predictable reductions in the average build rate of the final product. Additionally, it is shown that the more supplied parts that comprise a finished good the greater the expected reduction in average build rate.




Figure 1. Deming Analysis.
Figure 2. Rework Diagram for Estimation of K2.
Figure 4. Highlighting details in Production Flow Visualization from [9].
Figure 5. Deming Decision Tree.
Business case based on reduced touch labor hours.
Optimizing Test and Inspection Operations in Complex Engineering Products
  • Article
  • Full-text available

April 2021

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15 Reads

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1 Citation

American Journal of Operations Management and Information Systems

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Citations (1)


... The terms "Digital Bill of Materials" (DBOM) and "Software Bill of Materials" (SBOM) were introduced in the age of digitisation of manufacturing and products. In the first case, each product (or its separate components) usually presents, in digital form, the Part Number, Name, Description, Unit of Measurement, Cost, Manufacturer, Manufacturer Part Number, Supplier and Supplier Lead Time (Bhat et al., 2021). A software bill of materials 1 (SBOM) is a list of components in a piece of software. ...

Reference:

Digital vehicle identity – Digital VIN in forensic and technical practice
Manufacturing Bill-of-Materials Plus Operations Visualization Using D3
  • Citing Chapter
  • May 2021