Evidence Summary
Installing Noise
Activated Warning Signs in Library Quiet Spaces Does Not Appear to Reduce
Actual or Perceived Noise Levels
A Review of:
Lange, J., Miller-Nesbitt, A., & Severson, S.
(2016). Reducing noise in the academic library: The effectiveness of installing
noise meters. Library Hi Tech, 34(1), 45-63.
https://doi.org/10.1108/LHT-04-2015-0034
Reviewed by:
Michelle
DuBroy
Discipline
Librarian (Library Researcher Services)
Griffith
University Library
Southport,
Queensland, Australia
Email:
m.dubroy@griffith.edu.au
Received: 19 Aug. 2019 Accepted: 18 Oct. 2019
2019 DuBroy. This
is an Open Access article distributed under the terms of the Creative Commons‐Attribution‐Noncommercial‐Share Alike License 4.0
International (http://creativecommons.org/licenses/by-nc-sa/4.0/),
which permits unrestricted use, distribution, and reproduction in any medium,
provided the original work is properly attributed, not used for commercial
purposes, and, if transformed, the resulting work is redistributed under the
same or similar license to this one.
DOI: 10.18438/eblip29625
Abstract
Objective – To
explore if installing noise activated warning signs (NoiseSigns)
in library quiet spaces decreases perceived and actual noise levels.
Design – Noise
monitoring and user surveys (print and online).
Setting – A
large university in Canada.
Subjects – Users
of library quiet spaces where NoiseSigns have, and
have not, been installed.
Methods – NoiseSigns
provide a visual cue informing those present when noise levels exceed a
pre-determined level. In this study, researchers installed two NoiseSigns in quiet study spaces previously identified as
having the “biggest noise issues” (p. 51), and set the devices to illuminate
when noise levels exceeded 65 dB. User surveys
investigated respondents’ perceived and desired noise
levels via Likert scales before and after NoiseSigns
were installed. Actual noise level measurements (via an iPad app) and
headcounts were taken manually twice daily for 60 seconds during the same study
phases. Additionally, the NoiseSigns recorded noise
levels after they were installed. In order to account for variation in library
usage over time, control data was also collected in other spaces, where NoiseSigns had not been installed.
Main results – A
total of 96 surveys were completed and analyzed across all study locations and
time periods. One-way ANOVA tests showed there to be no significant difference
in perceived noise levels after installing NoiseSigns
in any of the intervention areas, in neither the short- or long-term.
Respondents’ comments suggested much of the undesired noise originated from
social areas adjacent to the quiet study zones or was of a type which would not
set off the NoiseSigns (e.g., “people chew[ing] too loud[ly]” (p. 54)).
One-way ANOVA tests also found there to be no significant difference in actual
noise levels in any of the intervention areas after device installation. Data
logging from the NoiseSigns themselves showed the
“majority” (p. 56) of noise measurements were in the vicinity of 45-50 dB and
“very rarely” (p. 56) did noise levels exceed the 65 dB
threshold. Despite this, survey respondents appeared to be unhappy with noise,
with mean desired noise levels being lower than those perceived.
Conclusion – As a
result of the study, the library now strives to have greater delineation
between quiet and social spaces. They also seek to ensure doors between these
areas are kept closed where possible. Additionally, the authors suggest
libraries install noise activated warning signs in social spaces adjacent to quiet
study zones in order to keep these spaces from becoming noisy enough to affect
nearby quiet zones. Future research could look at the effect of different
monitoring options (e.g., security guards, student self-monitoring) and various
furniture arrangements on noise levels in the library.
Commentary
Concern over noise in academic libraries is not new
(e.g., Luyben et al., 1981). Yet, new types of
collaborative, technology-enhanced learning spaces can often make libraries
seem noisier (McCaffrey & Breen, 2016; Yelinek
& Bressler, 2013). Varied solutions have been attempted (McCaffrey &
Breen, 2016; Yelinek & Bressler, 2013), but this
study appears to be the first published investigation into using devices like NoiseSign to combat the issue.
The article was reviewed using a critical appraisal tool (Glynn, 2006) and both
strengths and weaknesses were found.
The researchers outline the study methodology clearly
and with enough detail to allow replication. The survey, appended by the
authors, is simple and outlines the ways in which the information obtained may
be used. The researchers acquired ethics approval.
Readers, however, do not know how representative
survey respondents are of the entire user (and non-user) population.
Respondents were self-selected with the resulting data subject to bias (Lavrakas, 2008). Demographic information (e.g., age,
student type) was not collected. Further, readers do not know if the same
people responded to the survey multiple times.
The use of control spaces was prudent. Nevertheless,
the suitability of the chosen control spaces is unclear. Notably, for
intervention, the researchers selected spaces which were previously subject to
high levels of noise complaints. The authors do not disclose if control spaces
were similarly affected.
Limited resources meant actual noise levels were only
measured via the iPad app twice daily, Monday - Friday. It would be beneficial
for authors of future studies to use automated noise measurement devices which
are able to take frequent measurements any day of the week. Moreover, automated
devices would remove any effect the staff member's presence may have on the
results.
The authors present their results logically and
provide insightful commentary around these. However, the researchers could have
described the data logged from the NoiseSigns in
greater depth. Results of each ANOVA pairwise comparison could have been more
clearly conveyed in a table. Further, it is unclear how, or if, headcounts were
used as a confounding variable in the analysis.
The study provides an important first look at the
usefulness of noise
activated warning signs as a tool to reduce noise in libraries, and would have a wide audience. Further, the authors
demonstrate the value of publishing seemingly unsuccessful results through
their insightful discussion. Greater benefit, however, could be achieved
through a more refined methodology. The study also highlights the subjective
nature of noise. Noise can be an issue for people, even in environments
objectively determined to be ‘quiet.’ Thus, libraries should consider defining
and communicating noise expectations.
References
Glynn, L. (2006). A critical appraisal tool for library and information
research. Library Hi Tech, 24(3),
387-399. https://doi.org/10.1108/07378830610692154
Lavrakas, P.
J. (2008). Self-selection bias. In P. J. Lavrakas
(Ed.), Encyclopedia of survey research methods. Thousand Oaks, CA:
Sage Publications, Inc. https://doi.org/10.4135/9781412963947
Luyben, P. D.
(1981). Reducing noise in a college library. College and Research
Libraries, 42(5), 470-481. https://doi.org/10.5860/crl_42_05_470
McCaffrey, C., & Breen, M. (2016). Quiet in the library: An
evidence-based approach to improving the student experience. Portal:
Libraries and the Academy, 16(4), 775-791. https://doi.org/10.1353/pla.2016.0052
Yelinek, K., & Bressler, D. (2013). The perfect storm: A review of the
literature on increased noise levels in academic libraries. College
& Undergraduate Libraries, 20(1), 40-51. https://doi.org/10.1080/10691316.2013.761095