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Direct Natural Gas Conversion to Value-Added Chemicals 1st Edition – PDF ebook

Direct Natural Gas Conversion to Value-Added Chemicals 1st Edition – PDF ebook Copyright: 2021, Edition: 1st, Author: Jianli Hu; Dushyant Shekhawat, Publisher: CRC Press, Print ISBN: 9780367077938, etext ISBN: 9781000345506, Format: PDF

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eBook Details:

Full title: Direct Natural Gas Conversion to Value-Added Chemicals 1st Edition
Edition: 1st
Copyright year: 2021
Publisher: CRC Press
Author: Jianli Hu; Dushyant Shekhawat
ISBN: 9780367077938, 9781000345506
Format: PDF

Description of Direct Natural Gas Conversion to Value-Added Chemicals 1st Edition:
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