Flame detectors may comprise an optical sensor for detecting electromagnetic radiation, for example, visible, infrared or ultraviolet, which is indicative of the presence of a flame. A flame detector may detect and measure infrared (IR) radiation, for example in the optical spectrum at around 4.3 microns, a wavelength that is characteristic of the spectral emission peak of carbon dioxide. An optical sensor may also detect radiation in an ultraviolet range at about 200–260 nanometers. This is a region where flames have strong radiation, but where ultra-violet energy of the sun is sufficiently filtered by the atmosphere so as not to prohibit the construction of a practical field instrument.
Some flame detectors may use a single sensor, for an optical sensor, which operates at one of the spectral regions characteristic of radiation from flames. Flame detectors may measure the total radiation corresponding to the entire field of view of the sensor and measure radiation emitted by all sources of radiation in the spectral range being sensed within that field of view, including flame and/or non-flame sources which may be present. A flame detector may produce a “flame” alarm, intended to indicate the detection of a flame, when the level of combined radiation sensed reaches a predetermined threshold level, known or thought to be indicative of a flame.
Some flame detectors may produce false alarms which can be caused by an instrument's inability to distinguish between radiation emitted by flames and that emitted by other sources such as incandescent lamps, heaters, arc welding, or other sources of optical radiation. Single-wavelength flame detectors can also create false alarms triggered by other background radiation sources, including various reflections, such as solar or other light reflecting from a surface, such as water, industrial equipment, background structures and vehicles.
Various techniques have been developed which are intended to reduce false positives in flame detectors. Although these techniques may provide some improvement in false positive rates, the rate of false positives may still be higher than desired.
Features and advantages of the invention will be readily appreciated by persons skilled in the art from the following detailed description of exemplary embodiments thereof, as illustrated in the accompanying drawings, in which:
In the following detailed description and in the several figures of the drawing, like elements are identified with like reference numerals.
In an exemplary embodiment, the flame detector system 1 includes an electronic controller 8, e.g., a digital signal processor (DSP) 8, an ASIC or a microcomputer or microprocessor based system. In an exemplary embodiment, the signal processor 8 may comprise a Texas Instruments F2812 DSP, although other devices or logic circuits may alternatively be employed for other applications and embodiments. In an exemplary embodiment, the signal processor 8 comprises a dual universal asynchronous receiver transmitter (UART) as a serial communication interface (SCI) 81, a general-purpose input/output (GPIO) line 82, a serial peripheral interface (SPI) 83, an ADC 84 and an external memory interface (EMIF) 85 for a non-volatile memory, for example a flash memory 22. SCI MODBUS 91 or HART 92 protocols may serve as interfaces for serial communication over SCI 81. MODBUS and HART protocols are well-known standards for interfacing the user's computer or programmable logic controller (PLC).
In an exemplary embodiment, signal processor 8 receives the digital detector signals 5 from the ADC 4 through the serial peripheral interface SPI 83. In an exemplary embodiment, the signal processor 8 is connected to a plurality of interfaces through the SPI 83. The interfaces may include an analog output 21, flash memory 22, a real time clock 23, a warning relay 24, an alarm relay 25 and/or a fault relay 26. In an exemplary embodiment, the analog output 21 may be a 0–20 mA output. In an exemplary embodiment, a first current level at the analog output 21, for example 20 mA, may be indicative of a flame (alarm), a second current level at the analog output 21, for example 4 mA, may be indicative of normal operation, e.g., when no flame is present, and a third current level at the analog output 21, for example 0 mA, may be indicative of a system fault, which could be caused by conditions such as electrical malfunction. In other embodiments, other current levels may be selected to represent various conditions. The analog output can be used to trigger a flame suppression unit, in an exemplary embodiment.
In an exemplary embodiment, the flame detector system 1 may also include a temperature detector 6 for providing a temperature signal 7, indicative of an ambient temperature of the flame detector system for subsequent temperature compensation. The temperature detector 6 may be connected to the ADC 84 of the signal processor 8, which converts the temperature signal 7 into digital form. The system 1 may also include a vibration sensor for providing a vibration signal indicative of a vibration level experienced by the system 1. The vibration sensor may be connected to the ADC 84 of the signal processor 8, which converts the vibration signal into digital form.
In an exemplary embodiment, the signal processor 8 is programmed to perform pre-processing and artificial neural network processing, as discussed more fully below.
In an exemplary embodiment, the plurality of detectors 2 comprises a plurality of spectral sensors, which may have different spectral ranges and which may be arranged in an array. In an exemplary embodiment, the plurality of detectors 2 comprises optical sensors sensitive to multiple wavelengths. At least one or more of detectors 2 may be capable of detecting optical radiation in spectral regions where flames emit strong optical radiation. For example, the sensors may detect radiation in the UV to IR spectral ranges. Exemplary sensors suitable for use in an exemplary flame detection system 1 include, by way of example only, silicon, silicon carbide, gallium phosphate, gallium nitride, and aluminum gallium nitride sensors, and photoelectric tube-type sensors. Other exemplary sensors suitable for use in an exemplary flame detection system include IR sensors such as, for example, pyroelectric, lead sulfide (PbS), lead selenide (PbSe), and other quantum or thermal sensors. In an exemplary embodiment, a suitable UV sensor operates in the 200–400 nanometer region. In an exemplary embodiment, the photoelectric tube-type sensors and/or aluminum gallium nitride sensors each provide “solar blindness” or an immunity to sunlight. In an exemplary embodiment, a suitable IR sensor operates in the 4.3-micron region specific to hydrocarbon flames, and/or the 2.9-micron region specific to hydrogen flames.
In an exemplary embodiment, the plurality of sensors 2 comprise, in addition to sensors chosen for their sensitivity to flame emissions (e.g., UV, 2.9 microns and 4.3 microns), one or more sensors sensitive to different wavelengths to help uniquely identify flame radiation from non-flame radiation. These sensors, known as immunity sensors, are less sensitive to flame emissions, however, provide additional information on infrared background radiation. The immunity sensor or sensors detects wavelengths not associated with flames, and may be used to aid in discriminating between flame radiation from non-flame sources of radiation. In an exemplary embodiment, an immunity sensor comprises, for example, a 2.2-micron wavelength detector. A sensor suitable for the purpose is described in U.S. Pat. No. 6,150,659.
In the exemplary embodiment of
In an exemplary embodiment, collecting (101) sensor data comprises generating (102) analog signals and converting (103) the analog signals into digital form. In an exemplary embodiment, the sensors 2 and temperature sensor 6 (
In an exemplary embodiment, applying validation algorithms 110 comprises pre-processing (111) digital signals, artificial neural network (ANN) processing (112) of the pre-processed signals, and post-processing (113) of output signals from the ANN. In an exemplary embodiment, the pre-processing 111, the ANN processing 112, and the post processing 113 are all performed by the signal processor 8 (
In an exemplary embodiment, the analog signals from the optical sensors are periodically converted to digital form by the ADC 4. The information from one or more temperature and vibration sensors can also be used as additional ANN inputs. The pre-processing (111) of the digitized signals is applied to the digitized sensor signals. In an exemplary embodiment, an objective of the pre-processing step is to establish a correlation between frequency and time domain of the signal. In an exemplary embodiment pre-processing comprises applying (114) a data windowing function, and applying (115) Joint Time-Frequency Analysis (JTFA) functions, such as, Discrete Fourier Transform, Gabor Transform, or Discrete Wavelet Transform (116). In an exemplary embodiment, applying (114) a data windowing function comprises applying one of a Hanning, Hamming, Parzen, rectangular, Gauss, exponential or other appropriate data windowing function.
where N is number of sample points (e.g. 512) and n is between 1 and N.
In an exemplary embodiment, data preprocessing, entitled windowing 117 is applied (114) to a raw input signal before applying (115) a JTFA function. This data windowing function alleviates spectral “leakage” of the signal and thus improves the accuracy of the ANN classification.
Referring again to
In an exemplary embodiment, coefficients and algorithms used for the JTFA, windowing function, the scaling function and the ANN are stored in memory. In an exemplary embodiment, the coefficients may be stored in an external memory, for example the non-volatile FLASH memory 22 (
Referring again to
In an exemplary embodiment, the hidden layer 12 comprises a plurality of artificial neurons 14, for example from four to eight neurons. The number of neurons 14 may depend on the level of training and classification achieved by the ANN processing 112 during training (
In an exemplary embodiment, the external flash memory (
Referring again to
Thus, as depicted in
The outputs of sigmoid function S(Zj) from the hidden layer are introduced to the output layer. The connections between hidden and output layers are assigned weights Ojk. Now at every output neuron multiplication, in this exemplary embodiment, summation and sigmoid function are applied in the following order:
In an exemplary process of ANN training, the connection weights Hij and Ojk are constantly optimized by Back Propagation (BP). In an exemplary embodiment, the BP algorithm applied is based on mean root square error minimization for ANN training. These connection weights are then used in ANN validation, to compute the ANN outputs S(Yk), which are used for final decision making. Multi-layered ANNs and ANN training using BP algorithm to set synaptic connection weights are described, e.g. in Rumelhart, D. E., Hinton, G. E. & Williams, R. J., Learning Representations by Back-Propagating Errors, (1986) Nature, 323, 533–536.
In an exemplary embodiment illustrated in
In an exemplary embodiment, the ANN coefficients Hij, Ojk comprise a set of relevance criteria between various inputs and targets. This information is used to identify inputs that are most relevant for successful classification and eliminating inputs that degrade the classification capability. The ANN processing provides an output corresponding to the actual conditions represented by the inputs received from the sensors 2, 6. In an exemplary embodiment, the coefficients comprise a unique “fingerprint” of a particular flame-background combination. In an exemplary embodiment, the coefficients Hij, Ojk are established during training (
In an exemplary embodiment, the method 100 of operating a flame detection system comprises the post-processing (113) of the ANN output signals.
In an exemplary embodiment, outputting signals 120, can comprise one or more of the following, providing 121 an analog output 21 (
In an exemplary embodiment, the coefficients Hij and Ojk are established by training.
Assuming a random starting set of synaptic connection weights Hij, Ojk, the algorithm computes (212) a forward-pass computation through the ANN and outputs output signals 18. The output signals 18 are compared to the known target vectors 208 and the discrepancy between the two is input back into the ANN for back propagation. In an exemplary embodiment, the known target vectors 208 are obtained in the presence of a known test condition. The discrepancy between the calculated output signals 18 and the known target vectors 208 are then propagated back through the BP algorithm to calculate updated synaptic connection weights Hij, Ojk. This training of the neural network is performed after data collection of the training set is complete. This procedure is then repeated, using the updated synaptic connection weights as input to the forward pass computation of the ANN.
Each iteration of the forward-pass computation and corresponding back propagation of discrepancies is referred to as an epoch, and in an exemplary embodiment is repeated recursively until the value of discrepancy converges to a certain, pre-defined threshold. The number of epochs may for example be some predetermined number, or the threshold may be some error value.
In an exemplary embodiment, during training, the ANN establishes relevance criteria between the distinct inputs and targets, which correspond to the synaptic weights Hij and Ojk. This information is used to identify the fingerprint of a particular flame-background combination.
In an exemplary embodiment, the ANN may be subjected to a validation process after each training epoch. Validation can be performed to determine the success of the training. In an exemplary embodiment, validation comprises having the ANN calculate targets from a given subset of training data. The calculated targets are compared with the actual targets. The coefficients can be loaded into a flame detector system for field testing to perform validation.
In an exemplary embodiment, the training for the ANN employs a set of robust indoor, outdoor, and industrial site tests. Data from these tests can be used in the same scale and format for training. The ANN training can be performed on a personal or workstation computer, with the digitized sensor inputs provided to the computer. The connection weights from standardized training can be loaded onto the manufactured sensor units of a particular model of a flame detector system.
In an exemplary embodiment, an outdoor flame booth was used for outdoors arc welding and flame/non-flame combination tests. It has been observed for an exemplary embodiment that training on butane lighter and propane torch indoors, and n-heptane flame outdoors is sufficient to detect methane, gasoline and all other flames without training on those particular phenomena. Additional training data can be collected on a site-by-site basis, however, an objective of standard tests is to reduce or eliminate custom data collection, altogether.
The following Tables 1–2 list the names and conditions of standard indoor and outdoor tests employed in an exemplary baseline training of an ANN for the flame detector. In an exemplary embodiment, there are four different targets: quiet, flame, false alarm, and a test lamp (TL 103). The quiet, flame and false alarm targets are as described above regarding the ANN of
The order in which tests are arranged for input can also impact the training of the neural network. An exemplary order of the tests, which trains ANN for experimentally best classification, is shown in Table 3. Each test is 30-seconds (3000-samples) long in this example.
An exemplary embodiment of a training data collection procedure involves the following four steps:
1. Collect data for some period of time, e.g. 30 seconds, using a LabView data collection program. The raw voltages are logged into a text file with predefined name. Optionally the ANN outputs can be logged per a currently trained network.
2. Format data for pre-processing and training programs, e.g. in MATLAB, a tool for doing numerical computations with matrices and vectors. The raw text file obtained through the LabView program can be edited with addition of target columns and the test name on each line. Data and target columns can be saved separately in comma delimited files (data.csv, target.csv) and imported into MATLAB for pre-processing and ANN training.
3. For each collected 30-second test, log the test condition information into a database, e.g. an Access database.
4. An IR signal strength chart can be generated for every test. This can identify, before training, whether or not the data will be useful for ANN training. For instance, if IR signal generated by lighting a butane lighter at 15 ft is as weak as IR signal in quiet condition, then butane lighter data might not be as helpful for ANN training. After the training data has been collected, it can be used for ANN/BP training, as described above regarding
Using a communication interface such as, MODBUS, HART, FieldBus, or Ethernet protocols operating over fiber optic, serial, infrared, or wireless media, the master controller may also reprogram the flame detectors 1 using the serial communications data bus 350, e.g. to update ANN coefficients.
It is understood that the above-described embodiments are merely illustrative of the possible specific embodiments which may represent principles of the present invention. Other arrangements may readily be devised in accordance with these principles by those skilled in the art without departing from the scope and spirit of the invention.
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