Remote Sensing and Image Analysis

A recording instrument, such as an electrical power meter, controls the actuation of an electrical switch from one position to another at a rate which is a function of a measured quantity, such as kilowatt hours. The electrical switch controls the direction of current flow through a magnetic recording head so that information representing the measured quantity can be placed on a recording medium. A constant current power supply is provided to insure consistency of information placed on the recording medium independently of line voltage changes, and light emitting diodes are included in series with the magnetic head to show the existence and the direction of current flow through the recording head. Latching flip-flops may also be included between the electrical switch and the recording head to prevent the recording of multiple marks due to switch bounce. Electrically actuated mechanical counters may also be used to record changes in switch position.

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