Engine error detection system
US-2017370804-A1 · Dec 28, 2017 · US
US11326534B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-11326534-B2 |
| Application number | US-202117407984-A |
| Country | US |
| Kind code | B2 |
| Filing date | Aug 20, 2021 |
| Priority date | Nov 14, 2017 |
| Publication date | May 10, 2022 |
| Grant date | May 10, 2022 |
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Using machine learning for cylinder misfire detection in a dynamic firing level modulation controlled internal combustion engine is described. In a classification embodiment, cylinder misfires are differentiated from intentional skips based on a measured exhaust manifold pressure. In a regressive model embodiment, the measured exhaust manifold pressure is compared to a predicted exhaust manifold pressure generated by neural network in response to one or more inputs indicative of the operation of the vehicle. Based on the comparison, a prediction is made if a misfire has occurred or not. In yet other alternative embodiment, angular crank acceleration is used as well for misfire detection.
Opening claim text (preview).
What is claimed is: 1. A system, comprising: an internal combustion engine having a plurality of cylinders; a skip fire engine controller arranged to operate the cylinders of the internal combustion engine in a skip fire manner, the skip fire operation involving firing the cylinders during some working cycles and skipping the cylinders during other working cycles; a storage unit arranged to store: a first model of exhaust pressures indicative of successful firings of the cylinders of the internal combustion engine; and a second model of exhaust pressures indicative of successful skips of the cylinders of the internal combustion engine; and a neural network arranged to generate fault signals for working cycles of the cylinders that were either unsuccessfully fired or unsuccessfully skipped by comparing a measured exhaust pressure with (a) the first model for fire commands and (b) the second model for skip commands. 2. The system of claim 1 , wherein the first model includes: a first distribution range of exhaust pressures for successful firings; a second distribution range of exhaust pressures for unsuccessful firings; and a threshold exhaust pressure between the first distribution range and the second distribution range. 3. The system of claim 2 , wherein the neural network makes a decision to generate a fault signal for a working cycle of a cylinder that unsuccessfully fired if the measured exhaust pressure for the working cycle falls below the threshold. 4. The system of claim 1 , wherein the second model includes: a first distribution range of exhaust pressures for successful skips; a second distribution range of exhaust pressures for unsuccessful skips; and a threshold exhaust pressure between the first distribution range and the second distribution range. 5. The system of claim 4 , wherein the fault detection system makes a decision to generate a fault signal for a working cycle of a cylinder that unsuccessfully skipped if the measured exhaust pressure for the working cycle is above the threshold. 6. The system of claim 1 , wherein the first model and the second model are maintained in storage locations accessible by the neural network. 7. The system of claim 1 , wherein the first model and the second model are constructed from empirical data collected from multiple firings and multiple skips of the cylinders of the internal combustion engine. 8. The system of claim 1 , wherein the first model and the second model are updated by the neural network during operating of the internal combustion engine. 9. The system of claim 1 , wherein the measured exhaust pressure is measured using one or more pressure measuring sensors located in one of the following: (a) an exhaust runner fluidly coupling a cylinder to an exhaust manifold associated with the internal combustion engine; (b) within an exhaust manifold; (c) downstream of the exhaust manifold; or (d) any combination of (a) through (c). 10. The system of claim 1 , wherein the internal combustion engine is one of the following types of internal combustion engines: (a) a Diesel-fueled engine; (b) a gasoline-fueled engine; (c) a spark ignition engine; or (d) a compression ignition engine.
Activation functions · CPC title
the characteristics being an exhaust gas pressure · CPC title
using models instead of sensors to determine operating characteristics of exhaust systems, e.g. calculating catalyst temperature instead of measuring it directly · CPC title
Fuel pressure · CPC title
Selective cylinder activation, i.e. partial cylinder operation (deceleration cut-off F02D41/123) · CPC title
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