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Spectrally Non-Overlapping Background Noise Disturbs Echolocation Via Acoustic Masking in the CF-FM Bat, Hipposideros Pratti.

Jianwen Zou,Baoling Jin, Yuqin Ao,Yuqing Han, Baohua Huang, Yuyang Jia,Lijian Yang,Ya Jia,Qicai Chen,Ziying Fu

CONSERVATION PHYSIOLOGY(2023)

Hubei Key Laboratory of Genetic Regulation & Integrative Biology

Cited 3|Views12
Abstract
The environment noise may disturb animal behavior and echolocation via three potential mechanisms: acoustic masking, reduced attention and noise avoidance. Compared with the mechanisms of reduced attention and noise avoidance, acoustic masking is thought to occur only when the signal and background noise overlap spectrally and temporally. In this study, we investigated the effects of spectrally non-overlapping noise on echolocation pulses and electrophysiological responses of a constant frequency-frequency modulation (CF-FM) bat, Hipposideros pratti. We found that H. pratti called at higher intensities while keeping the CFs of their echolocation pulses consistent. Electrophysiological tests indicated that the noise could decrease auditory sensitivity and sharp intensity tuning, suggesting that spectrally non-overlapping noise imparts an acoustic masking effect. Because anthropogenic noises are usually concentrated at low frequencies and are spectrally non-overlapping with the bat's echolocation pulses, our results provide further evidence of negative consequences of anthropogenic noise. On this basis, we sound a warning against noise in the foraging habitats of echolocating bats.
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Key words
spectrally non-overlapping noise,the Lombard effect,intensity tuning,Hipposideros pratti,echolocation signal,auditory sensitivity
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