Claims
- 1. An artificial neuron comprising:
- a first synapsette having a first synapsette input and a first synapsette output, the first synapsette receiving a first input value via said first synapsette input, and providing, via said first synapsette output, a first synapsette output value related to said first input value according to a first predetermined fuzzy window transfer function;
- a second synapsette having a second synapsette input and a second synapsette output, the second synapsette receiving a second input value via said second synapsette input, and providing, via said second synapsette output, a second synapsette output value related to said second input value according to a second predetermined fuzzy window transfer function;
- a first neurode having first and second neurode inputs connected to the first and second synapsette outputs, respectively, and a first neurode output, the first neurode receiving said first and second synapsette output values via said first and second neurode inputs, and providing, via said first neurode output, a first neurode output, a first neurode output value corresponding to the sum of the first and second synapsette output values;
- a third synapsette having a third synapsette input and a third synapsette output, the third synapsette receiving said first input value via said third synapsette input, and providing, via said third synapsette output, a third synapsette output value related to said first input value according to a third predetermined fuzzy window transfer function;
- a fourth synapsette having a fourth synapsette input and a fourth synapsette output, the fourth synapsette receiving said second input value via said fourth synapsette input, and providing, via said fourth synapsette output, a fourth synapsette output value related to said second input value according to a fourth predetermined fuzzy window transfer function:
- a second neurode having third and fourth neurode inputs connected to the third and fourth synapsette outputs, respectively, and a second neurode output, the second neurode receiving said third and fourth synapsette output values via said third and fourth neurode inputs, and providing, via said second neurode output, a second neurode output value corresponding to the sum of the third and fourth synapsette output values; and
- a neuron having first and second neuron inputs connected to said first and second neurode outputs, respectively, and a first neuron output, the neuron receiving said first and second neurode output values via said first and second neuron inputs, and providing, via said first neuron output, a first neuron output value corresponding to the greater of said first and second neurode output valves.
- 2. The artificial neuron of claim 1 wherein said first and second fuzzy window transfer functions are selectively adaptable.
- 3. The artificial neuron of claim 1 wherein said first and second fuzzy window transfer functions are incrementally adaptable.
- 4. The artificial neuron of claim 1 wherein said first, second, third and fourth fuzzy window transfer functions are selectively adaptable.
- 5. The artificial neuron of claim 1 wherein said first, second, third and fourth fuzzy window transfer functions are incrementally adaptable.
- 6. The artificial neuron of claim 1 wherein said neuron has a second neuron output, the neuron providing via said second neuron output, a second neuron output value indicative of which of said first and second neurode output values is the greater.
- 7. The artificial neuron of claim 6 wherein said first, second, third and fourth fuzzy window transfer functions are selectively adaptable.
- 8. The artificial neuron of claim 6 wherein said first, second, third and fourth fuzzy window transfer functions are selectively adaptable.
- 9. An artificial synapsette having an input and an output, the synapsette receiving an input value via said input, and providing, via said output, an output value related to said input value according to a predetermined fuzzy window transfer function;
- wherein said predetermined fuzzy window transfer function is defined relative to an optimum value corresponding to a selected base value, for a range between a maximum value corresponding to the sum of said base value and a predetermined fuzzy window maximum displacement, and a minimum value corresponding to the difference between said base value and a predetermined fuzzy window minimum displacement.
- 10. The artificial synapsette of claim 9 wherein said fuzzy window transfer function is selectively adaptable.
- 11. The artificial synapsette of claim 9 wherein said fuzzy window transfer function is incrementally adaptable.
- 12. The artificial synapsette of claim 9 wherein, for input values either below said minimum value of said fuzzy window transfer function or above said maximum value of said fuzzy window function, the synapsette provides a predetermined no.sub.-- significance value, but, for input values between said minimum and maximum values of said fuzzy window transfer function, the synapsette provides output values which vary from a predetermined high.sub.-- significance value, when the input value corresponds to the optimum value of said fuzzy window transfer function, to a predetermined low.sub.-- significance value, when the input value corresponds to either said maximum or said minimum value.
Parent Case Info
This application is a divisional of application Ser. No. 07/699,321, filed May 13, 1991 now U.S. Pat. No. 5,390,261.
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Divisions (1)
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Number |
Date |
Country |
Parent |
699321 |
May 1991 |
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