“…In order to promote research, a chaotic term is added to Equations ( 21) and ( 22) to introduce controlled randomness. Bats use social learning, as demonstrated by Equations ( 23) and (24) to adjust their locations and velocities in response to guidance from top performers. Finally, Equations ( 25) and ( 26) indicate how loudness and pulse rate should be modified throughout iterations to preserve a balance between exploration and exploitation.…”
Section: Algorithm Descriptionmentioning
confidence: 99%
“…These equations detail the constraints and behaviors associated with the charging and discharging of Type 1 batteries. Equation ( 8) represents the maximum charging power constraint for Type 1 batteries, ensuring that the charging power does not exceed the maximum allowable power when the battery is not swapped out [24,25]. Equation ( 9) imposes a similar constraint on the maximum discharging power for Type 1 batteries, preventing it from exceeding the maximum allowable power when the battery is not swapped out.…”
Section: Battery Charging and Dischargingmentioning
Exaggerated anticipatory anxiety is common in social anxiety disorder (SAD).
Neuroimaging studies have revealed altered neural activity in response to social stimuli in SAD, but fewer studies have examined neural activity during anticipation of feared social stimuli in SAD.
The current study examined the time course and magnitude of activity in threat processing brain regions during speech anticipation in socially anxious individuals and healthy controls (HC).
Method Participants (SAD n = 58; HC n = 16) underwent functional magnetic resonance imaging (fMRI) during which they completed a 90s control anticipation task and 90s speech anticipation task.
Exaggerated anticipatory anxiety is common in social anxiety disorder (SAD).
Neuroimaging studies have revealed altered neural activity in response to social stimuli in SAD, but fewer studies have examined neural activity during anticipation of feared social stimuli in SAD.
The current study examined the time course and magnitude of activity in threat processing brain regions during speech anticipation in socially anxious individuals and healthy controls (HC).
Method Participants (SAD n = 58; HC n = 16) underwent functional magnetic resonance imaging (fMRI) during which they completed a 90s control anticipation task and 90s speech anticipation task.
“…In order to promote research, a chaotic term is added to Equations ( 21) and ( 22) to introduce controlled randomness. Bats use social learning, as demonstrated by Equations ( 23) and (24) to adjust their locations and velocities in response to guidance from top performers. Finally, Equations ( 25) and ( 26) indicate how loudness and pulse rate should be modified throughout iterations to preserve a balance between exploration and exploitation.…”
Section: Algorithm Descriptionmentioning
confidence: 99%
“…These equations detail the constraints and behaviors associated with the charging and discharging of Type 1 batteries. Equation ( 8) represents the maximum charging power constraint for Type 1 batteries, ensuring that the charging power does not exceed the maximum allowable power when the battery is not swapped out [24,25]. Equation ( 9) imposes a similar constraint on the maximum discharging power for Type 1 batteries, preventing it from exceeding the maximum allowable power when the battery is not swapped out.…”
Section: Battery Charging and Dischargingmentioning
Exaggerated anticipatory anxiety is common in social anxiety disorder (SAD).
Neuroimaging studies have revealed altered neural activity in response to social stimuli in SAD, but fewer studies have examined neural activity during anticipation of feared social stimuli in SAD.
The current study examined the time course and magnitude of activity in threat processing brain regions during speech anticipation in socially anxious individuals and healthy controls (HC).
Method Participants (SAD n = 58; HC n = 16) underwent functional magnetic resonance imaging (fMRI) during which they completed a 90s control anticipation task and 90s speech anticipation task.
Exaggerated anticipatory anxiety is common in social anxiety disorder (SAD).
Neuroimaging studies have revealed altered neural activity in response to social stimuli in SAD, but fewer studies have examined neural activity during anticipation of feared social stimuli in SAD.
The current study examined the time course and magnitude of activity in threat processing brain regions during speech anticipation in socially anxious individuals and healthy controls (HC).
Method Participants (SAD n = 58; HC n = 16) underwent functional magnetic resonance imaging (fMRI) during which they completed a 90s control anticipation task and 90s speech anticipation task.
“…National household travel survey (NHTS) data is used to model the EVs charging demand [9,58,59]. The EV daily initial departure time is represented by the gamma distribution (1).…”
Section: The Temporal Characteristics Analysis Of Travelsmentioning
Exaggerated anticipatory anxiety is common in social anxiety disorder (SAD).
Neuroimaging studies have revealed altered neural activity in response to social stimuli in SAD, but fewer studies have examined neural activity during anticipation of feared social stimuli in SAD.
The current study examined the time course and magnitude of activity in threat processing brain regions during speech anticipation in socially anxious individuals and healthy controls (HC).
Method Participants (SAD n = 58; HC n = 16) underwent functional magnetic resonance imaging (fMRI) during which they completed a 90s control anticipation task and 90s speech anticipation task.
Exaggerated anticipatory anxiety is common in social anxiety disorder (SAD).
Neuroimaging studies have revealed altered neural activity in response to social stimuli in SAD, but fewer studies have examined neural activity during anticipation of feared social stimuli in SAD.
The current study examined the time course and magnitude of activity in threat processing brain regions during speech anticipation in socially anxious individuals and healthy controls (HC).
Method Participants (SAD n = 58; HC n = 16) underwent functional magnetic resonance imaging (fMRI) during which they completed a 90s control anticipation task and 90s speech anticipation task.
“…Load monitoring of logistics distribution vehicles is not only related to distribution efficiency but also directly affects transportation costs and transportation safety. [10][11][12][13][14] For example, real-time monitoring of vehicle load can detect cases of overloading, thus avoiding potential safety hazards. 15,16 Moreover, precise monitoring of vehicle load can optimize the way goods are loaded, improve transportation efficiency, and reduce transportation costs.…”
Exaggerated anticipatory anxiety is common in social anxiety disorder (SAD).
Neuroimaging studies have revealed altered neural activity in response to social stimuli in SAD, but fewer studies have examined neural activity during anticipation of feared social stimuli in SAD.
The current study examined the time course and magnitude of activity in threat processing brain regions during speech anticipation in socially anxious individuals and healthy controls (HC).
Method Participants (SAD n = 58; HC n = 16) underwent functional magnetic resonance imaging (fMRI) during which they completed a 90s control anticipation task and 90s speech anticipation task.
Exaggerated anticipatory anxiety is common in social anxiety disorder (SAD).
Neuroimaging studies have revealed altered neural activity in response to social stimuli in SAD, but fewer studies have examined neural activity during anticipation of feared social stimuli in SAD.
The current study examined the time course and magnitude of activity in threat processing brain regions during speech anticipation in socially anxious individuals and healthy controls (HC).
Method Participants (SAD n = 58; HC n = 16) underwent functional magnetic resonance imaging (fMRI) during which they completed a 90s control anticipation task and 90s speech anticipation task.
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