Fr. 106.00

Application of Skeletal Numbers to Categorize Chemical Clusters

English · Paperback / Softback

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Description

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The book introduces the concept of application of skeletal numbers to categorize skeletal elements, fragments, molecules and clusters into cluster series. It explains their origin from the series formulas S =4n+q and S=14n+q or the cluster valence electron equation Ve=8n-2K and 18n-2K. The capping concept and the K(n) parameter based on series are introduced and explained. The classification of clusters into [Mx] clans and S=4n+q families are introduced. The three major cluster series are identified. The ideal distribution of ligands and charges onto skeletal elements is explained. Categorization of Matryoshka clusters using the 4N series for the first time is also covered. A new formula for calculating cluster valence electrons Ve=4+2x+2(n-1) for main group elements and Ve=14+2x+12(n-1) for transition metal elements is introduced for the first time.

About the author










Enos Masheija Rwantale Kiremire graduated with Bsc (Hons) degree majoring in Chemistry from University of East Africa, Makerere University College, Uganda in 1970. He had the opportunity to be taught by an inspiring notable visiting chemist, Prof. C.A. Coulson. He later did a PhD, graduating in 1977 from the University of New Brunswick, Canada.

Product details

Authors Enos Kiremire
Publisher LAP Lambert Academic Publishing
 
Languages English
Product format Paperback / Softback
Released 20.09.2018
 
EAN 9783330028241
ISBN 978-3-33-002824-1
No. of pages 268
Subjects Natural sciences, medicine, IT, technology > Chemistry
Non-fiction book > Nature, technology > Natural science

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