Bersini, 1999 - Google Patents
The endogenous double plasticity of the immune network and the inspiration to be drawn for engineering artifactsBersini, 1999
- Document ID
- 4060850387703614396
- Author
- Bersini H
- Publication year
- Publication venue
- Artificial immune systems and their applications
External Links
Snippet
Although for reasons that are discussed, immunology have had a weak influence so far on the design of artifacts, one key aspects of immune networks, namely their endogenous double plasticity could be of interest for future engineering applications facing complex, hard …
- 230000001537 neural 0 abstract description 23
Classifications
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