Page 110 - Intro Predictive Maintenance
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Predictive Maintenance Techniques  101






























             Figure 6–1 Vibration is dynamic and amplitudes constantly change.


            tion profiles.  Anti-aliasing filters are incorporated into the analyzers specifically
            to remove spurious signals such as impacts or transients. Although the intent behind
            the use of anti-aliasing filters is valid, their use can distort a machine’s vibration
            profile.

            Because vibration data are dynamic and the amplitudes constantly change, as shown
            in Figure 6–1, most predictive maintenance system vendors strongly recommend
            averaging the data. They typically recommend acquiring 3 to 12 samples of the vibra-
            tion profile and averaging the individual profiles into a composite signature.  This
            approach eliminates the variation in vibration amplitude of the individual frequency
            components that make up the machine’s signature; however, these variations, referred
            to as  beats, can be a valuable diagnostic tool. Unfortunately, they are not avail-
            able from microprocessor-based instruments because of averaging and other system
            limitations.

            The most serious limitations created by averaging and the anti-aliasing filters are the
            inability to detect and record impacts that often occur within machinery. These impacts
            generally are indications of abnormal behavior and are often the key to detecting and
            identifying incipient problems.


            Frequency-Domain Data
            Most predictive maintenance programs rely almost exclusively on frequency-domain
            vibration data. The microprocessor-based analyzers gather time-domain data and auto-
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