Sorrento, Canada

Dean Wallace



Average Co-Inventor Count = 7.0

ph-index = 1

Forward Citations = 2(Granted Patents)


Company Filing History:


Years Active: 2020

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1 patent (USPTO):Explore Patents

Title: Dean Wallace: Innovator in Bitumen Recovery Technology

Introduction

Dean Wallace is a notable inventor based in Sorrento, California. He has made significant contributions to the field of oil sands extraction, particularly in the area of bitumen recovery. His innovative approach has led to the development of a unique method that enhances the efficiency of bitumen extraction processes.

Latest Patents

Dean Wallace holds a patent for a method titled "Controlling bitumen recovery from an oil sands ore body by using a predictive ore processability model in producing a blended ore feedstock." This patent outlines a process that utilizes a predictive ore processability model to optimize bitumen recovery by considering various ore characteristics. This method is crucial for planning ore deliveries from different locations within the ore body, ultimately leading to a more effective blended ore feedstock.

Career Highlights

Throughout his career, Dean has worked with prominent companies in the oil industry, including Syncrude Canada Ltd. and Syncrude Canada Ltd. in Trust for the Owners of the Syncrude Project As Such Owners Exist Now and in the Future. His experience in these organizations has allowed him to refine his expertise in bitumen extraction and contribute to advancements in the field.

Collaborations

Dean has collaborated with talented professionals in his field, including Jun Long and Jonathan Spence. These partnerships have fostered innovation and have been instrumental in the development of his patented technology.

Conclusion

Dean Wallace's contributions to the field of bitumen recovery demonstrate his commitment to innovation and efficiency in oil sands extraction. His patented method represents a significant advancement in the industry, showcasing the importance of predictive modeling in optimizing resource recovery.

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