Claims
- 1. A potential estimation apparatus which estimates a potential of a photosensitive body of an image forming apparatus that carries out an electrophotography process using the photosensitive body, said potential estimation apparatus comprising:
- a sensor group, including at least one sensor, sensing and outputting data related to information which affects the electrophotography process;
- a storage unit storing the data output from said sensor group and information related to charge of the photosensitive body; and
- an estimation network including a first neural network which is coupled to said sensor group and said storage unit, estimating a charged portion potential of the photosensitive body based on a charge retentivity of the photosensitive body learned by said first neural network,
- said first neural network in a learning mode receiving as inputs at least one of the data output from said sensor group and time-sequentially sampled and parameters which affect the charge retentivity of the photosensitive body, and receiving as a teaching value a previously estimated charged portion potential with respect to at least an amount of charge and the charge retentivity of the photosensitive body.
- 2. The potential estimation apparatus as claimed in claim 1, wherein the charged portion potential is estimated from a relationship between the amount of charge and a charged portion potential within a past predetermined time.
- 3. The potential estimation apparatus as claimed in claim 1, wherein said information related to charge of the photosensitive body includes an amount of charge and an amount of exposure of the photosensitive body, and wherein said first neural network in the learning mode receives as the teaching value a previously estimated charged portion potential with respect to the amount of charge, the charge retentively and the amount of exposure of the photosensitive body.
- 4. The potential estimation apparatus as claimed in claim 3, wherein:
- said estimation network further includes a second neural network, coupled to said sensor group and said storage unit, estimating an exposed portion potential of an exposed portion of the photosensitive body based on an exposure sensitivity of the photosensitive body learned by said second neural network;
- said second neural network in a learning mode receiving as inputs at least one of the data output from said sensor group and time-sequentially sampled and parameters which affect the exposure sensitivity of the photosensitive body, and an output of said first neural network, and receiving as a teaching value a previously estimated exposed portion potential with respect to at least the exposure sensitivity, the amount of charge, an amount of exposure and the charged portion potential of the photosensitive body.
- 5. The potential estimation apparatus as claimed in claim 1, wherein:
- said information related to charge of the photosensitive body includes an amount of charge and an amount of exposure of the photosensitive body,
- said estimation network further includes a second neural network, coupled to said sensor group and said storage unit, estimating an exposed portion potential of an exposed portion of the photosensitive body, said exposed portion potential being based on an exposure sensitivity of the photosensitive body learned by said second neural network, and
- said second neural network in a learning mode receiving as inputs at least one of the data output from said sensor group and time-sequentially sampled and parameters which affect the exposure sensitivity of the photosensitivity body, and an output of said first neural network, and receiving as a teaching value a previously estimated exposed portion potential with respect to at least the exposure sensitivity, the amount of charge, an amount of exposure and the charged portion potential of the photosensitive body.
- 6. A potential estimation apparatus which estimates a potential of a photosensitive body of an image forming apparatus that carries out an electrophotography process using the photosensitive body, said potential estimation apparatus comprising:
- a sensor group including at least one sensor, sensing and outputting data related to information which affects the electrophotography process;
- a storage unit storing the data output from said sensor group; and
- an estimation network, including a first neural network coupled to said sensor group and said storage unit, estimating a charged portion potential of the photosensitive body based on a charge retentivity of the photosensitive body learned by said first neural network,
- said first neural network in a learning mode receiving as inputs at least one of the data output from said sensor group and time-sequentially sampled and parameters which affect the charge retentivity of the photosensitive body, and receiving as a teaching value a previously estimated charged portion potential with respect to the estimated charged portion potential and an amount of charge of a pattern which is formed on the photosensitive body by charging with a predetermined amount of charge.
- 7. The potential estimation apparatus as claimed in claim 6, wherein the charged portion potential is estimated from a relationship between the amount of charge and a charged portion potential within a past predetermined time.
- 8. The potential estimation apparatus as claimed in claim 6, wherein:
- said first neural network receives as a teaching value a previously estimated charged portion potential with respect to the estimated charged portion potential, the amount of charge and an amount of exposure of a pattern which is formed on the photosensitive body by charging with a predetermined amount of charge and exposing with a predetermined amount of exposure.
- 9. The potential estimating apparatus as claimed in claim 8, wherein:
- said estimation network further includes a second neural network, coupled to said sensor group and said storage unit, estimating an exposed portion potential of an exposed portion of the photosensitive body based on an exposure sensitivity of the photosensitive body learned by said second neural network,
- said second neural network in a learning mode receiving as inputs at least one of the data output from said sensor group and time-sequentially sampled and parameters which affect the exposure sensitivity of the photosensitive body, and an output of said first neural network, and receiving as a teaching value a previously estimated exposed portion potential with respect to the estimated exposed portion potential, the estimated charged portion potential the amount of charge and the amount of exposure of a pattern which is form on the photosensitive body by charging with the predetermined amount of charge and exposing with a predetermined amount of exposure.
- 10. The potential estimation apparatus as claimed in claim 6, wherein:
- said estimation network further includes a second neural network, coupled to said sensor group and said storage unit, estimating an exposed portion potential of an exposed portion of the photosensitive body based on an exposure sensitivity of the body learned by said second neural network,
- said second neural network in a learning mode receiving as inputs at least one of the data output from said sensor group and time-sequentially sampled and parameters which affect the exposure sensitivity of the photosensitive body, and an output of said first neural network, and receiving as a teaching value a previously estimated exposed portion potential with respect to the estimated exposed portion potential, the estimated charged portion potential, the amount of charge and the amount of exposure of a pattern which is formed on the photosensitive body by exposing with a predetermined amount of exposure.
- 11. A potential estimation apparatus which estimates a potential of a photosensitive body of an image forming apparatus that carries out an electrophotography process using the photosensitive body, said potential estimation apparatus comprising:
- a sensor group, including at least one sensor, sensing and outputting data related information which affects the electrophotography process;
- a storage unit storing the data output from said sensor group and information related to an amount of charge and an amount of exposure of the photosensitive body; and
- an estimating network, including a neural network coupled to said sensor group and said storage unit, estimating an exposed portion potential of an exposed portion of the photosensitive body based on an exposed sensitivity of the photosensitive body learned by said neural network,
- said neural network in a learning mode receiving as inputs at least one of the data output from said sensor group and time-sequentially sampled and parameters which affect the exposure sensitivity of the photosensitive body, and receiving as a teaching value a previously estimated exposed portion potential with respect to at least the exposure sensitivity, the amount of charge and the amount of exposure of the photosensitive body.
- 12. The potential estimation apparatus as claimed in claim 11, wherein the exposed portion potential is estimated from a relationship between the amount of exposure and an exposed portion potential within a past predetermined time.
- 13. A potential estimation apparatus which estimates a potential of a photosensitive body of an image forming apparatus that carries out an electrophotography process using the photosensitive body, said potential estimation apparatus comprising:
- a sensor group, including at least one sensor, sensing and outputting data related to information which affects the electrophotography process;
- a storage unit storing the data output from said sensor group; and
- an estimation network, including a neural network coupled to said sensor group and said storage unit, estimating an exposed portion potential of an exposed portion of the photosensitive body based on an exposure sensitivity of the photosensitive body learned by said neural network,
- said neural network in a learning mode receiving as inputs at least one of the data output from said sensor group and time-sequentially sampled and parameters which affect the exposure sensitivity of the photosensitive body, and receiving as a teaching value a previously estimated exposed portion potential with respect to at least the estimated exposed portion potential, an amount of charge and an amount of exposure of a pattern which is formed on the photosensitive body by charging with a predetermined amount of charge and exposing with a predetermined amount of exposure.
- 14. The potential estimation apparatus as claimed in claim 13, wherein the exposed portion potential is estimated from a relationship between the amount of exposure and an exposed portion potential within a past predetermined time.
- 15. A potential estimation apparatus which estimates a potential of a photosensitive body of an image forming apparatus that carries out an electrophotography process using the photosensitive body, said potential estimation apparatus comprising:
- a sensor group, including at least on sensor, sensing and outputting data related to information which affects the electrophotography process;
- a storage unit storing the data output from said sensor group and information related to an amount of charge and an amount of exposure of the photosensitive body; and
- an estimation network, including a neural network coupled to said sensor group and said storage unit, estimating a potential of a latent image portion of the photosensitive body based on a charge retentivity and an exposure sensitivity of the photosensitive body learned by said neural network,
- said neural network in a learning mode receiving as inputs at least one of the data output from said sensor group and time-sequentially sampled and parameters which affect the charge retentivity and the exposure sensitivity of the photosensitive body, and receiving as a teaching value a previously estimated latent image potential with respect to at least the charge retentivity, the exposure sensitivity, the amount of charge, the amount of exposure and the charged portion potential of the photosensitive body.
- 16. The potential estimation apparatus as claimed in claim 15, wherein the exposed portion potential is estimated from a relationship between the amount of exposure and an exposed portion potential within a past predetermined time.
- 17. A potential estimation apparatus which estimates a potential of the photosensitive body of an image forming apparatus that carries out an electrophotography process using the photosensitive body, said potential estimation apparatus comprising:
- a sensor group, including at least one sensor, sensing and outputting data related to information which affects the electrophotography process;
- a storage unit storing the data output from said sensor group; and
- an estimation network, including a neural network coupled to said sensor group and said storage unit, estimating a potential of a latent image portion of the photosensitive body based on a charge retentivity and an exposure sensitivity of the photosensitive body learned by said neural network,
- said neural network in a learning mode receiving as inputs at least one of the data output from said sensor group and time-sequentially sampled and parameters which affect the charge retentivity and the exposure sensitivity of the photosensitive body, and receiving as a teaching value a previously estimated latent image potential with respect to at least a charged portion potential, an exposed portion potential, an amount of charge and an amount of exposure of a pattern which is formed on the photosensitive body by charging with a predetermined amount of charge and exposing with a predetermined amount of exposure.
- 18. The potential estimation apparatus as claimed in claim 17, wherein the potential of a latent image portion is estimated from a relationship between the amount of charge, a latent image potential and the amount of exposure.
- 19. A potential estimation method for estimating a potential of a photosensitive body of an image forming apparatus that carries out an electrophotography process using the photosensitive body, said potential estimation method comprising the steps of:
- (a) sensing and outputting output data related to information which affects the electrophotography process;
- (b) storing the output data; and
- (c) estimating a charged portion potential of the photosensitive body based on a charge retentivity of the photosensitive body learned by a first neural network,
- said first neural network in a learning mode receiving as inputs at least one of the output data and time-sequentially sampled and parameters which affect the charge retentivity of the photosensitive body, and receiving as a teaching value a previously estimated charged portion potential with respect to at least an amount of charge and the charge retentivity of the photosensitive body.
- 20. The potential estimation method as claimed in claim 19, wherein said estimating step comprises estimating the charged portion potential from a relationship between the amount of charge and a charged portion potential within a past predetermined time.
- 21. The potential estimation method as claimed in claim 19, wherein said sensing and outputting step comprises sensing an amount of charge and an amount of exposure of the photosensitive body, and wherein said first neural network in the learning mode receives as the teaching value a previously estimated charged portion potential with respect to the amount of charge, the charge retentivity and the amount of exposure of the photosensitive body.
- 22. The potential estimation method as claimed in claim 21, which further comprises the steps of:
- (d) estimating an exposed portion potential of an exposed portion of the photosensitive body based on an exposure sensitivity of the photosensitive body learned by a second neural network,
- said second neural network in a learning mode receiving as inputs at least one of the output data and time-sequentially sampled and parameters which affect the exposure sensitivity of the photosensitive body, and an output of said first neural network, and receiving as a teaching value a previously estimated exposed portion potential with respect to at least the exposure sensitivity, the amount of charge, an amount of exposure and the charged portion potential of the photosensitive body.
- 23. The potential estimation method as claimed in claim 19, wherein:
- said information related to charge of the photosensitive body includes an amount of charge and an amount of exposure of the photosensitive body,
- said potential estimation method further comprising the steps of:
- (d) estimating an exposed portion potential of an exposed portion of the photosensitive body by a second neural network, said exposed portion potential being based on an exposure sensitivity of the photosensitive body learned by said second neural network,
- said second neural network in a learning mode receiving as inputs at least one of the output data and time-sequentially sampled and parameters which affect the exposure sensitivity of the photosensitive body, and an output of said first neural network, and receiving as a teaching value a previously estimated exposed portion potential with respect to at least the exposure sensitivity, the amount of charge, an amount of exposure and the charged portion potential of the photosensitive body.
- 24. A potential estimation method for estimating a potential of a photosensitive body of an image forming apparatus that carries out an electrophotography process using the photosensitive body, said potential estimation method comprising the steps of:
- (a) sensing and outputting output data related to information which affects the electrophotography process;
- (b) storing the output data; and
- (c) estimating a charged portion potential of the photosensitive body based on a charge retentivity of the photosensitive body learned by a first neural network,
- said first neural network in a learning mode receiving as inputs at least one of the output data and time-sequentially sampled and parameters which affect the charge retentivity of the photosensitive body, and receiving as a teaching value a previously estimated charged portion potential with respect to the estimated charged portion potential and an amount of charge of a pattern which is formed on the photosensitive body by charging with a predetermined amount of charge.
- 25. The potential estimation method as claimed in claim 24 wherein said estimating step comprises estimating the charged portion potential from a relationship between the amount of charge and a charged portion potential within a past predetermined time.
- 26. The potential estimation method as claimed in claim 24, wherein:
- said first neural network receives as a teaching value a previously estimated charged portion potential with respect to the estimated charged portion potential, the amount of charge and an amount of exposure of a pattern which is formed on the photosensitive body by charging with a predetermined amount of charge and exposing with a predetermined amount of exposure.
- 27. The potential estimation method as claimed in claim 26, which further comprises the steps of:
- (d) estimating an exposed portion potential of an exposed portion of the photosensitive body based on an exposure sensitivity of the photosensitive body earned by a second neural network,
- said second neural network in a learning mode receiving as inputs at least one of the output data and time-sequentially sampled and parameters which affect the exposure sensitivity of the photosensitive body, and an output of said first neural network, and receiving as a teaching value a previously estimated exposed portion potential with respect to the estimated exposed portion potential, the estimated charged portion potential, the amount of charge and the amount of exposure of a pattern which is formed on the photosensitive body by charging with the predetermined amount of charge and exposing with a predetermined amount of exposure.
- 28. The potential estimation method as claimed in claim 24, which further comprises the steps of:
- (d) estimating an exposed portion potential of an exposed portion of the photosensitive body based on an exposure sensitivity of the photosensitive body learned by a second neural network,
- said second neural network in a learning mode receiving as inputs at least one of the output data and time-sequentially sampled and parameters which affect the exposure sensitivity of the photosensitivity body, and an output of said first neural network, and receiving as a teaching value a previously estimated exposed portion potential with respect to the estimated exposed portion potential, the estimated charges portion potential, the amount of charge and the amount of exposure of a pattern which is formed on the photosensitive body by exposing with a predetermined amount of exposure.
- 29. A potential estimation method for estimating a potential of the photosensitive body of an image forming apparatus that carries out an electrophotography process using the photosensitive body, said potential estimation method comprising the steps of:
- (a) sensing and outputting output data related to information which affects the electrophotography process;
- (b) storing the output data related to information which related to an amount of charge and an amount of exposure of the photosensitive body; and
- (c) estimating an exposed potion potential of an exposed potion of the photosensitive body based on an exposure sensitivity of the photosensitive body learned by a neural network,
- said neural network in a learning mode receiving as inputs at least one of the output data and time-sequentially sampled and parameters which affect the exposure sensitivity of the photosensitive body, and receiving as a teaching value a previously estimated exposed portion potential with respect to at least the exposure sensitivity, the amount of charge and the amount of exposure of the photosensitive body.
- 30. The potential estimation method as claimed n claim 29, wherein said estimating step comprises estimating the exposed portion potential from a relationship between the amount of exposure and an exposed portion potential within a past predetermined time.
- 31. A potential estimation method for estimating a potential of a photosensitive body of an image forming apparatus that carries out an electrophotography process using the photosensitive body, said potential estimation method comprising the steps of:
- (a) sensing and outputting output data related to information which affects the electrophotography process;
- (b) storing the output data; and
- (c) estimating an exposed portion potential of an exposed portion of the photosensitive body based on an exposure sensitivity of the photosensitive body learned by a neural network,
- said neural network in a learning mode receiving as inputs at least one of the output data and time-sequentially sampled and parameters which affect the exposure sensitivity of the photosensitive body, and receiving as a teaching value a previously estimated portion potential with respect to at least the estimated exposed portion potential, an amount of charge and an amount of exposure of a pattern which is formed on the photosensitive body by charging with predetermined amount of charge and exposing with a predetermined amount of exposure.
- 32. The potential estimating method as claimed in claim 31, wherein said estimating step comprises estimating the exposed portion potential from a relationship between the amount of exposure and an exposed portion potential within a past predetermined time.
- 33. A potential estimation method for estimating a potential of a photosensitive body of an image forming apparatus that carries out an electrophotography process using the photosensitive body, said potential estimation method comprising the steps of:
- (a) sensing and outputting output data related to information which affects the electrophotography process;
- (b) storing the output data and information related to an amount of charge and an amount of exposure of the photosensitive body; and
- (c) estimating a potential of a latent image portion of the photosensitive body based on a charge retentivity and an exposure sensitivity of the photosensitive body learned by a neural network,
- said neural network in a learning mode receiving as inputs at least one of the output data and time-sequentially sampled and parameters which affect the charge retentivity and the exposure sensitivity of the photosensitive body, and receiving as a teaching value a previously estimated latent image potential with respect to at least the charge retentivity, the exposure sensitivity, the amount of charge, the amount of exposure and the charged portion potential of the photosensitive body.
- 34. The potential estimation method as claimed in claim 33, wherein said estimating step comprises estimating the potential of the latent image portion from a relationship between the amount of charge, a charge portion potential and the amount of exposure within a past predetermined time.
- 35. A potential estimation method for estimating a potential of a photosensitive body of an image forming apparatus that carries out an electrophotography process using the photosensitive body, said potential estimation method comprising the steps of:
- (a) sensing and outputting output data related to information which affects the electrophotography process;
- (b) storing the output data; and
- (c) estimating a potential of latent image portion of the photosensitive body based on a charge retentivity and an exposure sensitivity of the photosensitive body learned by a neural network,
- said neural network in a learning mode receiving as inputs at least one of the output data and time-sequentially sampled and parameters which affect the charge retentivity and the exposure sensitivity of the body, and receiving as a teaching value a previously estimated latent image potential with respect to at least a charged portion potential, an exposed portion potential, an amount of charge and an amount of exposure of a pattern which is formed on the photosensitive body by charging with a predetermined amount of charge and exposing with a predetermined amount of exposure.
- 36. The potential estimation method as claimed in claim 35, wherein said estimating step comprises estimating the potential of the latent image portion from a relationship between the amount of charge, a latent image potential and the amount of exposure.
Priority Claims (1)
Number |
Date |
Country |
Kind |
4-320934 |
Nov 1992 |
JPX |
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Parent Case Info
This is a continuation of application Ser. No. 08/729,798 filed Oct. 8, 1996, now U.S. Pat. No. 5,699,096, which in turn is a continuation of application Ser. No. 08/157,926 filed Nov. 24, 1993.
US Referenced Citations (4)
Foreign Referenced Citations (2)
Number |
Date |
Country |
63-151973 |
Jun 1988 |
JPX |
310269 |
Jan 1991 |
JPX |
Continuations (2)
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Number |
Date |
Country |
Parent |
729798 |
Oct 1996 |
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Parent |
157926 |
Nov 1993 |
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