Pau0031 / DMTO-Catalyst-Carbon-Deposition-EDBR-JITLLinks
Dimethyl ether/Methanol to Olefins (DMTO) is one of the important unit in coal chemical industry, and the distribution of its reaction products can be regulated and optimized by catalyst carbon deposition. Aiming at the disadvantages of time-consuming and high-cost analysis of traditional catalyst carbon deposition measurement methods, a Just-…
☆11Updated 3 years ago
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