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What rrl did this research use : Allam, F. C.,? 


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Research conducted by Allam, F. C. was not mentioned in any of the abstracts provided.

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The paper does not mention the use of any specific research literature review (RRL) by Allam, F. C.
Open accessProceedings ArticleDOI
27 Jan 2004
5 Citations
The paper does not mention the use of any specific RRL (Resistor-Resistor-Inductor) in the research.
The paper does not mention the use of any research reference or author named "Allam, F. C."
The provided paper does not mention the research of Allam, F. C. Therefore, it does not use any RRL (Related Research Literature) from Allam, F. C.
The provided paper does not mention the use of any specific literature review (RRL) by Allam, F. C.

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